In this notebook, some template code has already been provided for you, and you will need to implement additional functionality to successfully complete this project. You will not need to modify the included code beyond what is requested. Sections that begin with '(IMPLEMENTATION)' in the header indicate that the following block of code will require additional functionality which you must provide. Instructions will be provided for each section, and the specifics of the implementation are marked in the code block with a 'TODO' statement. Please be sure to read the instructions carefully!
++Note: Once you have completed all of the code implementations, you need to finalize your work by exporting the Jupyter Notebook as an HTML document. Before exporting the notebook to html, all of the code cells need to have been run so that reviewers can see the final implementation and output. You can then export the notebook by using the menu above and navigating to File -> Download as -> HTML (.html). Include the finished document along with this notebook as your submission.
+
In addition to implementing code, there will be questions that you must answer which relate to the project and your implementation. Each section where you will answer a question is preceded by a 'Question X' header. Carefully read each question and provide thorough answers in the following text boxes that begin with 'Answer:'. Your project submission will be evaluated based on your answers to each of the questions and the implementation you provide.
++Note: Code and Markdown cells can be executed using the Shift + Enter keyboard shortcut. Markdown cells can be edited by double-clicking the cell to enter edit mode.
+
The rubric contains optional "Stand Out Suggestions" for enhancing the project beyond the minimum requirements. If you decide to pursue the "Stand Out Suggestions", you should include the code in this Jupyter notebook.
+In this notebook, you will make the first steps towards developing an algorithm that could be used as part of a mobile or web app. At the end of this project, your code will accept any user-supplied image as input. If a dog is detected in the image, it will provide an estimate of the dog's breed. If a human is detected, it will provide an estimate of the dog breed that is most resembling. The image below displays potential sample output of your finished project (... but we expect that each student's algorithm will behave differently!).
+In this real-world setting, you will need to piece together a series of models to perform different tasks; for instance, the algorithm that detects humans in an image will be different from the CNN that infers dog breed. There are many points of possible failure, and no perfect algorithm exists. Your imperfect solution will nonetheless create a fun user experience!
+We break the notebook into separate steps. Feel free to use the links below to navigate the notebook.
+Make sure that you've downloaded the required human and dog datasets:
+Download the dog dataset. Unzip the folder and place it in this project's home directory, at the location /dogImages
.
Download the human dataset. Unzip the folder and place it in the home directory, at location /lfw
.
Note: If you are using a Windows machine, you are encouraged to use 7zip to extract the folder.
+In the code cell below, we save the file paths for both the human (LFW) dataset and dog dataset in the numpy arrays human_files
and dog_files
.
import numpy as np
+from glob import glob
+
+# load filenames for human and dog images
+human_files = np.array(glob("lfw/*/*"))
+dog_files = np.array(glob("dogImages/*/*/*"))
+
+# print number of images in each dataset
+print('There are %d total human images.' % len(human_files))
+print('There are %d total dog images.' % len(dog_files))
+
There are 13233 total human images. +There are 8351 total dog images. ++
In this section, we use OpenCV's implementation of Haar feature-based cascade classifiers to detect human faces in images.
+OpenCV provides many pre-trained face detectors, stored as XML files on github. We have downloaded one of these detectors and stored it in the haarcascades
directory. In the next code cell, we demonstrate how to use this detector to find human faces in a sample image.
import cv2
+import matplotlib.pyplot as plt
+%matplotlib inline
+# extract pre-trained face detector
+face_cascade = cv2.CascadeClassifier('haarcascades/haarcascade_frontalface_alt.xml')
+# load color (BGR) image
+img = cv2.imread(human_files[0])
+
+# convert BGR image to grayscale
+gray = cv2.cvtColor(img, cv2.COLOR_BGR2GRAY)
+
+# find faces in image
+faces = face_cascade.detectMultiScale(gray)
+
+# print number of faces detected in the image
+print('Number of faces detected:', len(faces))
+
+# get bounding box for each detected face
+for (x,y,w,h) in faces:
+ # add bounding box to color image
+ cv2.rectangle(img,(x,y),(x+w,y+h),(255,0,0),2)
+
+# convert BGR image to RGB for plotting
+cv_rgb = cv2.cvtColor(img, cv2.COLOR_BGR2RGB)
+
+# display the image, along with bounding box
+plt.imshow(cv_rgb)
+plt.show()
+
Number of faces detected: 1 ++
Before using any of the face detectors, it is standard procedure to convert the images to grayscale. The detectMultiScale
function executes the classifier stored in face_cascade
and takes the grayscale image as a parameter.
In the above code, faces
is a numpy array of detected faces, where each row corresponds to a detected face. Each detected face is a 1D array with four entries that specifies the bounding box of the detected face. The first two entries in the array (extracted in the above code as x
and y
) specify the horizontal and vertical positions of the top left corner of the bounding box. The last two entries in the array (extracted here as w
and h
) specify the width and height of the box.
We can use this procedure to write a function that returns True
if a human face is detected in an image and False
otherwise. This function, aptly named face_detector
, takes a string-valued file path to an image as input and appears in the code block below.
# returns "True" if face is detected in image stored at img_path
+def face_detector(img_path):
+ img = cv2.imread(img_path)
+ gray = cv2.cvtColor(img, cv2.COLOR_BGR2GRAY)
+ faces = face_cascade.detectMultiScale(gray)
+ return len(faces) > 0
+
Question 1: Use the code cell below to test the performance of the face_detector
function.
human_files
have a detected human face? dog_files
have a detected human face? Ideally, we would like 100% of human images with a detected face and 0% of dog images with a detected face. You will see that our algorithm falls short of this goal, but still gives acceptable performance. We extract the file paths for the first 100 images from each of the datasets and store them in the numpy arrays human_files_short
and dog_files_short
.
Answer:
+from tqdm import tqdm
+
+human_files_short = human_files[:100]
+dog_files_short = dog_files[:100]
+
+#-#-# Do NOT modify the code above this line. #-#-#
+
+## TODO: Test the performance of the face_detector algorithm
+## on the images in human_files_short and dog_files_short.
+
+face_in_human = 0
+for i in tqdm(range(len(human_files_short))):
+ if face_detector(human_files_short[i]):
+ face_in_human += 1
+
+face_in_dog = 0
+for i in tqdm(range(len(dog_files_short))):
+ if face_detector(dog_files_short[i]):
+ face_in_dog += 1
+
+print(f"Found {face_in_human} faces [{(face_in_human/len(human_files_short))*100}%] in human_files_short")
+print(f"Found {face_in_dog} faces [{(face_in_dog/len(dog_files_short))*100}%] in dog_files_short")
+
100%|████████████████████████████████████████████████████████████████████████████████| 100/100 [00:04<00:00, 20.15it/s] +100%|████████████████████████████████████████████████████████████████████████████████| 100/100 [00:22<00:00, 4.41it/s]+
Found 96 faces [96.0%] in human_files_short +Found 18 faces [18.0%] in dog_files_short ++
++
We suggest the face detector from OpenCV as a potential way to detect human images in your algorithm, but you are free to explore other approaches, especially approaches that make use of deep learning :). Please use the code cell below to design and test your own face detection algorithm. If you decide to pursue this optional task, report performance on human_files_short
and dog_files_short
.
### (Optional)
+### TODO: Test performance of another face detection algorithm.
+### Feel free to use as many code cells as needed.
+
In this section, we use a pre-trained model to detect dogs in images.
+The code cell below downloads the VGG-16 model, along with weights that have been trained on ImageNet, a very large, very popular dataset used for image classification and other vision tasks. ImageNet contains over 10 million URLs, each linking to an image containing an object from one of 1000 categories.
+ +import torch
+import torchvision.models as models
+
+# define VGG16 model
+VGG16 = models.vgg16(pretrained=True)
+
+# check if CUDA is available
+use_cuda = torch.cuda.is_available()
+
+# move model to GPU if CUDA is available
+if use_cuda:
+ print("Cuda is available")
+ VGG16 = VGG16.cuda()
+
Given an image, this pre-trained VGG-16 model returns a prediction (derived from the 1000 possible categories in ImageNet) for the object that is contained in the image.
+ +In the next code cell, you will write a function that accepts a path to an image (such as 'dogImages/train/001.Affenpinscher/Affenpinscher_00001.jpg'
) as input and returns the index corresponding to the ImageNet class that is predicted by the pre-trained VGG-16 model. The output should always be an integer between 0 and 999, inclusive.
Before writing the function, make sure that you take the time to learn how to appropriately pre-process tensors for pre-trained models in the PyTorch documentation.
+ +from PIL import Image
+import torchvision.transforms as transforms
+
+# Set PIL to be tolerant of image files that are truncated.
+from PIL import ImageFile
+ImageFile.LOAD_TRUNCATED_IMAGES = True
+
+def VGG16_predict(img_path):
+ '''
+ Use pre-trained VGG-16 model to obtain index corresponding to
+ predicted ImageNet class for image at specified path
+
+ Args:
+ img_path: path to an image
+
+ Returns:
+ Index corresponding to VGG-16 model's prediction
+ '''
+
+ ## TODO: Complete the function.
+ ## Load and pre-process an image from the given img_path
+ ## Return the *index* of the predicted class for that image
+
+ image = Image.open(img_path)
+
+ min_img_size = 224
+ # The min size, as noted in the PyTorch pretrained models doc, is 224 px.
+ transform = transforms.Compose([transforms.Resize(min_img_size), transforms.CenterCrop(min_img_size),
+ transforms.ToTensor(), transforms.Normalize(mean=[0.485, 0.456, 0.406],
+ std=[0.229, 0.224, 0.225])])
+
+
+ image = transform(image)
+ image = image.unsqueeze(0)
+ if use_cuda:
+ image = image.to('cuda')
+
+ ## Return the *index* of the predicted class for that image
+
+ output = VGG16(image)
+
+ if use_cuda:
+ output = output.to('cpu')
+
+ return output.data.numpy().argmax()# predicted class index
+
+
VGG16_predict('dogImages/train/006.American_eskimo_dog/American_eskimo_dog_00409.jpg')
+
258+
While looking at the dictionary, you will notice that the categories corresponding to dogs appear in an uninterrupted sequence and correspond to dictionary keys 151-268, inclusive, to include all categories from 'Chihuahua'
to 'Mexican hairless'
. Thus, in order to check to see if an image is predicted to contain a dog by the pre-trained VGG-16 model, we need only check if the pre-trained model predicts an index between 151 and 268 (inclusive).
Use these ideas to complete the dog_detector
function below, which returns True
if a dog is detected in an image (and False
if not).
### returns "True" if a dog is detected in the image stored at img_path
+def dog_detector(img_path):
+ ## TODO: Complete the function.
+
+ prediction = VGG16_predict(img_path)
+
+ if(prediction > 150 and prediction < 269):
+ return True
+
+ return False # true/false
+
Question 2: Use the code cell below to test the performance of your dog_detector
function.
human_files_short
have a detected dog? dog_files_short
have a detected dog?Answer:
+### TODO: Test the performance of the dog_detector function
+### on the images in human_files_short and dog_files_short.
+
+dogs_in_human = 0
+dogs_in_dogs = 0
+for i in tqdm (range(len(human_files_short))):
+ if dog_detector(human_files_short[i]):
+ dogs_in_human += 1
+
+for i in tqdm (range(len(dog_files_short))):
+ if dog_detector(dog_files_short[i]):
+ dogs_in_dogs += 1
+
+print(f"Found {dogs_in_human} dogs [{(dogs_in_human/len(human_files_short))*100}%] in human_files")
+print(f"Found {dogs_in_dogs} dogs [{(dogs_in_dogs/len(dog_files_short))*100}%] in dog_files")
+
100%|████████████████████████████████████████████████████████████████████████████████| 100/100 [01:06<00:00, 1.51it/s] +100%|████████████████████████████████████████████████████████████████████████████████| 100/100 [01:06<00:00, 1.49it/s]+
Found 0 dogs [0.0%] in human_files +Found 94 dogs [94.0%] in dog_files ++
++
We suggest VGG-16 as a potential network to detect dog images in your algorithm, but you are free to explore other pre-trained networks (such as Inception-v3, ResNet-50, etc). Please use the code cell below to test other pre-trained PyTorch models. If you decide to pursue this optional task, report performance on human_files_short
and dog_files_short
.
### (Optional)
+### TODO: Report the performance of another pre-trained network.
+### Feel free to use as many code cells as needed.
+
Now that we have functions for detecting humans and dogs in images, we need a way to predict breed from images. In this step, you will create a CNN that classifies dog breeds. You must create your CNN from scratch (so, you can't use transfer learning yet!), and you must attain a test accuracy of at least 10%. In Step 4 of this notebook, you will have the opportunity to use transfer learning to create a CNN that attains greatly improved accuracy.
+We mention that the task of assigning breed to dogs from images is considered exceptionally challenging. To see why, consider that even a human would have trouble distinguishing between a Brittany and a Welsh Springer Spaniel.
+Brittany | +Welsh Springer Spaniel | +
---|---|
![]() |
+![]() |
+
It is not difficult to find other dog breed pairs with minimal inter-class variation (for instance, Curly-Coated Retrievers and American Water Spaniels).
+Curly-Coated Retriever | +American Water Spaniel | +
---|---|
![]() |
+![]() |
+
Likewise, recall that labradors come in yellow, chocolate, and black. Your vision-based algorithm will have to conquer this high intra-class variation to determine how to classify all of these different shades as the same breed.
+Yellow Labrador | +Chocolate Labrador | +Black Labrador | +
---|---|---|
![]() |
+![]() |
+![]() |
+
We also mention that random chance presents an exceptionally low bar: setting aside the fact that the classes are slightly imabalanced, a random guess will provide a correct answer roughly 1 in 133 times, which corresponds to an accuracy of less than 1%.
+Remember that the practice is far ahead of the theory in deep learning. Experiment with many different architectures, and trust your intuition. And, of course, have fun!
+Use the code cell below to write three separate data loaders for the training, validation, and test datasets of dog images (located at dogImages/train
, dogImages/valid
, and dogImages/test
, respectively). You may find this documentation on custom datasets to be a useful resource. If you are interested in augmenting your training and/or validation data, check out the wide variety of transforms!
import os
+from torchvision import datasets
+
+### TODO: Write data loaders for training, validation, and test sets
+## Specify appropriate transforms, and batch_sizes
+
+batch_size = 20
+min_img_size = 224
+transform_train = transforms.Compose([transforms.RandomResizedCrop(min_img_size), transforms.RandomRotation(10),
+ transforms.RandomHorizontalFlip(), transforms.ToTensor(),
+ transforms.Normalize(mean=[0.485, 0.456, 0.406], std=[0.229, 0.224, 0.225])])
+
+transform_valid = transforms.Compose([transforms.Resize(min_img_size), transforms.CenterCrop(min_img_size),
+ transforms.ToTensor(), transforms.Normalize(mean=[0.485, 0.456, 0.406],
+ std=[0.229, 0.224, 0.225])])
+
+train_path = datasets.ImageFolder('dogImages/train',transform=transform_train)
+test_path = datasets.ImageFolder('dogImages/test',transform=transform_valid)
+valid_path = datasets.ImageFolder('dogImages/valid',transform=transform_valid)
+
+
+loaders_scratch = {'train': torch.utils.data.DataLoader(train_path, batch_size=batch_size, shuffle=True),
+
+ 'test': torch.utils.data.DataLoader(test_path, batch_size=batch_size, shuffle=True),
+
+ 'valid': torch.utils.data.DataLoader(valid_path, batch_size=batch_size, shuffle=True)}
+
Question 3: Describe your chosen procedure for preprocessing the data.
+Answer:
+Create a CNN to classify dog breed. Use the template in the code cell below.
+ +import torch.nn as nn
+import torch.nn.functional as F
+
+# define the CNN architecture
+class Net(nn.Module):
+ ### TODO: choose an architecture, and complete the class
+ def __init__(self):
+ super(Net, self).__init__()
+ ## Define layers of a CNN
+ # 4 Convolutional layers
+ self.conv_1 = nn.Conv2d(3,16,3,padding=1)
+
+ self.conv_2 = nn.Conv2d(16,32,3,padding=1)
+
+ self.conv_3 = nn.Conv2d(32,64,3,padding=1)
+
+ self.conv_4 = nn.Conv2d(64,128,3,padding=1)
+
+ self.conv1_bn = nn.BatchNorm2d(16)
+ self.conv2_bn = nn.BatchNorm2d(32)
+ self.conv3_bn = nn.BatchNorm2d(64)
+ self.conv4_bn = nn.BatchNorm2d(128)
+
+ self.pool = nn.MaxPool2d(2, 2)
+
+ # 3 Linear layers
+ # linear layer (128 * 14 * 14 -> 12544)
+ self.fc_1 = nn.Linear(128 * 14 * 14, 1024)
+ # linear layer (12544 -> 6272)
+ self.fc_2 = nn.Linear(1024, 512)
+ # linear layer (12544 -> 6272)
+ self.fc_3 = nn.Linear(512, 133)
+ # dropout layer (p=0.25)
+ self.dropout = nn.Dropout(0.5)
+
+
+
+ def forward(self, x):
+ ## Define forward behavior
+ x = self.pool(F.relu(self.conv1_bn(self.conv_1(x))))
+ x = self.pool(F.relu(self.conv2_bn(self.conv_2(x))))
+ x = self.pool(F.relu(self.conv3_bn(self.conv_3(x))))
+ x = self.pool(F.relu(self.conv4_bn(self.conv_4(x))))
+ # flatten image input
+ x = x.view(-1, np.product(x.shape[1:]))
+ # add dropout layer
+ x = self.dropout(x)
+ # 1st hidden layer, with relu activation function
+ x = F.relu(self.fc_1(x))
+ # add dropout layer
+ x = self.dropout(x)
+ # 2nd hidden layer, with relu activation function
+ x = F.relu(self.fc_2(x))
+ # add dropout layer
+ x = self.dropout(x)
+ # output layer with softmax
+ x = self.fc_3(x)
+
+ return x
+
+#-#-# You do NOT have to modify the code below this line. #-#-#
+
+# instantiate the CNN
+model_scratch = Net()
+
+# move tensors to GPU if CUDA is available
+if use_cuda:
+ model_scratch.cuda()
+
Question 4: Outline the steps you took to get to your final CNN architecture and your reasoning at each step.
+ +Answer:
+Use the next code cell to specify a loss function and optimizer. Save the chosen loss function as criterion_scratch
, and the optimizer as optimizer_scratch
below.
import torch.optim as optim
+
+### TODO: select loss function
+criterion_scratch = nn.CrossEntropyLoss()
+
+### TODO: select optimizer
+optimizer_scratch = optim.Adam(model_scratch.parameters(), lr=0.001)
+
Train and validate your model in the code cell below. Save the final model parameters at filepath 'model_scratch.pt'
.
from PIL import ImageFile
+import time
+ImageFile.LOAD_TRUNCATED_IMAGES = True
+def train(n_epochs, loaders, model, optimizer, criterion, use_cuda, save_path):
+ """returns trained model"""
+ # initialize tracker for minimum validation loss
+ valid_loss_min = np.Inf
+
+ for epoch in range(1, n_epochs+1):
+ # initialize variables to monitor training and validation loss
+ train_loss = 0.0
+ valid_loss = 0.0
+ start_time = time.time()
+
+ ###################
+ # train the model #
+ ###################
+ model.train()
+
+ for batch_idx, (data, target) in enumerate(loaders['train']):
+ #print(f'Path: {path}\n')
+ # move to GPU
+
+ if use_cuda:
+ data, target = data.cuda(), target.cuda()
+ ## find the loss and update the model parameters accordingly
+ ## record the average training loss, using something like
+ ## train_loss = train_loss + ((1 / (batch_idx + 1)) * (loss.data - train_loss))
+ optimizer.zero_grad()
+
+ output = model(data)
+
+ loss = criterion(output, target)
+
+ loss.backward()
+
+ optimizer.step()
+
+ train_loss = train_loss + ((1 / (batch_idx + 1)) * (loss.data - train_loss))
+ ######################
+ # validate the model #
+ ######################
+ model.eval()
+ for batch_idx, (data, target) in enumerate(loaders['valid']):
+ # move to GPU
+ if use_cuda:
+ data, target = data.cuda(), target.cuda()
+ ## update the average validation loss
+ output = model(data)
+
+ loss = criterion(output,target)
+
+ valid_loss = valid_loss + ((1 / (batch_idx + 1)) * (loss.data - valid_loss))
+
+ # print training/validation statistics
+ end_time = time.time()
+ epoch_time = end_time - start_time
+ print('Epoch: {} \tSec. spent in epoch {:.2f}\tTraining Loss: {:.6f} \tValidation Loss: {:.6f}'.format(
+ epoch,
+ epoch_time,
+ train_loss,
+ valid_loss
+ ))
+
+ ## TODO: save the model if validation loss has decreased
+ if valid_loss <= valid_loss_min:
+ print('Validation loss decreased ({:.46} --> {:.6f}). Saving model'.format(
+ valid_loss_min,
+ valid_loss))
+ torch.save(model.state_dict(), save_path)
+ valid_loss_min = valid_loss
+
+ # return trained model
+ return model
+
+
+# train the model
+model_scratch = train(40, loaders_scratch, model_scratch, optimizer_scratch,
+ criterion_scratch, use_cuda, 'model_scratch.pt')
+
+# load the model that got the best validation accuracy
+model_scratch.load_state_dict(torch.load('model_scratch.pt'))
+
Epoch: 1 Sec. spent in epoch 1007.81 Training Loss: 5.045363 Validation Loss: 4.867544 +Validation loss decreased (inf --> 4.867544). Saving model +Epoch: 2 Sec. spent in epoch 1733.52 Training Loss: 4.881907 Validation Loss: 4.858373 +Validation loss decreased (4.867543697357177734375 --> 4.858373). Saving model +Epoch: 3 Sec. spent in epoch 1049.54 Training Loss: 4.858354 Validation Loss: 4.813962 +Validation loss decreased (4.85837268829345703125 --> 4.813962). Saving model +Epoch: 4 Sec. spent in epoch 1097.96 Training Loss: 4.832860 Validation Loss: 4.776076 +Validation loss decreased (4.81396198272705078125 --> 4.776076). Saving model +Epoch: 5 Sec. spent in epoch 1118.09 Training Loss: 4.818565 Validation Loss: 4.782058 +Epoch: 6 Sec. spent in epoch 1103.88 Training Loss: 4.807873 Validation Loss: 4.743745 +Validation loss decreased (4.776075839996337890625 --> 4.743745). Saving model +Epoch: 7 Sec. spent in epoch 1111.70 Training Loss: 4.794950 Validation Loss: 4.747508 +Epoch: 8 Sec. spent in epoch 1114.42 Training Loss: 4.786737 Validation Loss: 4.700951 +Validation loss decreased (4.74374485015869140625 --> 4.700951). Saving model +Epoch: 9 Sec. spent in epoch 1129.31 Training Loss: 4.777702 Validation Loss: 4.712528 +Epoch: 10 Sec. spent in epoch 1111.26 Training Loss: 4.778144 Validation Loss: 4.685511 +Validation loss decreased (4.700951099395751953125 --> 4.685511). Saving model +Epoch: 11 Sec. spent in epoch 1130.35 Training Loss: 4.759265 Validation Loss: 4.700334 +Epoch: 12 Sec. spent in epoch 1114.96 Training Loss: 4.740970 Validation Loss: 4.680397 +Validation loss decreased (4.6855106353759765625 --> 4.680397). Saving model +Epoch: 13 Sec. spent in epoch 1170.92 Training Loss: 4.724675 Validation Loss: 4.641817 +Validation loss decreased (4.680396556854248046875 --> 4.641817). Saving model +Epoch: 14 Sec. spent in epoch 1126.19 Training Loss: 4.703886 Validation Loss: 4.630018 +Validation loss decreased (4.6418170928955078125 --> 4.630018). Saving model +Epoch: 15 Sec. spent in epoch 1132.28 Training Loss: 4.692550 Validation Loss: 4.617931 +Validation loss decreased (4.6300182342529296875 --> 4.617931). Saving model +Epoch: 16 Sec. spent in epoch 1064.57 Training Loss: 4.681177 Validation Loss: 4.604334 +Validation loss decreased (4.617930889129638671875 --> 4.604334). Saving model +Epoch: 17 Sec. spent in epoch 1049.38 Training Loss: 4.656940 Validation Loss: 4.589087 +Validation loss decreased (4.6043338775634765625 --> 4.589087). Saving model +Epoch: 18 Sec. spent in epoch 1046.38 Training Loss: 4.619784 Validation Loss: 4.467548 +Validation loss decreased (4.58908748626708984375 --> 4.467548). Saving model +Epoch: 19 Sec. spent in epoch 1050.42 Training Loss: 4.580341 Validation Loss: 4.402242 +Validation loss decreased (4.467548370361328125 --> 4.402242). Saving model +Epoch: 20 Sec. spent in epoch 1031.60 Training Loss: 4.526961 Validation Loss: 4.314043 +Validation loss decreased (4.402242183685302734375 --> 4.314043). Saving model +Epoch: 21 Sec. spent in epoch 1045.16 Training Loss: 4.469679 Validation Loss: 4.289766 +Validation loss decreased (4.314042568206787109375 --> 4.289766). Saving model +Epoch: 22 Sec. spent in epoch 1036.87 Training Loss: 4.451042 Validation Loss: 4.291351 +Epoch: 23 Sec. spent in epoch 1036.85 Training Loss: 4.434579 Validation Loss: 4.237468 +Validation loss decreased (4.289765834808349609375 --> 4.237468). Saving model +Epoch: 24 Sec. spent in epoch 1033.99 Training Loss: 4.410046 Validation Loss: 4.256171 +Epoch: 25 Sec. spent in epoch 1030.23 Training Loss: 4.373800 Validation Loss: 4.203207 +Validation loss decreased (4.237468242645263671875 --> 4.203207). Saving model +Epoch: 26 Sec. spent in epoch 1043.36 Training Loss: 4.352248 Validation Loss: 4.191356 +Validation loss decreased (4.203207492828369140625 --> 4.191356). Saving model +Epoch: 27 Sec. spent in epoch 1038.84 Training Loss: 4.348096 Validation Loss: 4.184841 +Validation loss decreased (4.191356182098388671875 --> 4.184841). Saving model +Epoch: 28 Sec. spent in epoch 1003.33 Training Loss: 4.334260 Validation Loss: 4.185010 +Epoch: 29 Sec. spent in epoch 968.89 Training Loss: 4.306895 Validation Loss: 4.130088 +Validation loss decreased (4.184841156005859375 --> 4.130088). Saving model +Epoch: 30 Sec. spent in epoch 974.50 Training Loss: 4.314743 Validation Loss: 4.122968 +Validation loss decreased (4.13008785247802734375 --> 4.122968). Saving model +Epoch: 31 Sec. spent in epoch 959.28 Training Loss: 4.281910 Validation Loss: 4.059975 +Validation loss decreased (4.122968196868896484375 --> 4.059975). Saving model +Epoch: 32 Sec. spent in epoch 973.62 Training Loss: 4.266283 Validation Loss: 4.048931 +Validation loss decreased (4.059975147247314453125 --> 4.048931). Saving model +Epoch: 33 Sec. spent in epoch 961.35 Training Loss: 4.256562 Validation Loss: 4.071686 +Epoch: 34 Sec. spent in epoch 956.29 Training Loss: 4.246737 Validation Loss: 4.023552 +Validation loss decreased (4.048931121826171875 --> 4.023552). Saving model +Epoch: 35 Sec. spent in epoch 951.39 Training Loss: 4.216971 Validation Loss: 4.008220 +Validation loss decreased (4.02355194091796875 --> 4.008220). Saving model +Epoch: 36 Sec. spent in epoch 956.14 Training Loss: 4.185484 Validation Loss: 3.989025 +Validation loss decreased (4.008220195770263671875 --> 3.989025). Saving model +Epoch: 37 Sec. spent in epoch 949.74 Training Loss: 4.196458 Validation Loss: 3.957479 +Validation loss decreased (3.989025115966796875 --> 3.957479). Saving model +Epoch: 38 Sec. spent in epoch 940.44 Training Loss: 4.180910 Validation Loss: 3.973938 +Epoch: 39 Sec. spent in epoch 936.46 Training Loss: 4.165804 Validation Loss: 3.961264 +Epoch: 40 Sec. spent in epoch 956.91 Training Loss: 4.169381 Validation Loss: 3.954540 +Validation loss decreased (3.95747852325439453125 --> 3.954540). Saving model ++
<All keys matched successfully>+
Try out your model on the test dataset of dog images. Use the code cell below to calculate and print the test loss and accuracy. Ensure that your test accuracy is greater than 10%.
+ +def test(loaders, model, criterion, use_cuda):
+
+ # monitor test loss and accuracy
+ test_loss = 0.
+ correct = 0.
+ total = 0.
+
+ model.eval()
+ for batch_idx, (data, target) in enumerate(loaders['test']):
+ # move to GPU
+ if use_cuda:
+ data, target = data.cuda(), target.cuda()
+ # forward pass: compute predicted outputs by passing inputs to the model
+ output = model(data)
+ # calculate the loss
+ loss = criterion(output, target)
+ # update average test loss
+ test_loss = test_loss + ((1 / (batch_idx + 1)) * (loss.data - test_loss))
+ # convert output probabilities to predicted class
+ pred = output.data.max(1, keepdim=True)[1]
+ # compare predictions to true label
+ correct += np.sum(np.squeeze(pred.eq(target.data.view_as(pred))).cpu().numpy())
+ total += data.size(0)
+
+ print('Test Loss: {:.6f}\n'.format(test_loss))
+
+ print('\nTest Accuracy: %2d%% (%2d/%2d)' % (
+ 100. * correct / total, correct, total))
+
+# call test function
+test(loaders_scratch, model_scratch, criterion_scratch, use_cuda)
+
Test Loss: 3.918597 + + +Test Accuracy: 8% (72/836) ++
You will now use transfer learning to create a CNN that can identify dog breed from images. Your CNN must attain at least 60% accuracy on the test set.
+Use the code cell below to write three separate data loaders for the training, validation, and test datasets of dog images (located at dogImages/train
, dogImages/valid
, and dogImages/test
, respectively).
If you like, you are welcome to use the same data loaders from the previous step, when you created a CNN from scratch.
+ +## TODO: Specify data loaders
+transfer_loaders = loaders_scratch.copy()
+
Use transfer learning to create a CNN to classify dog breed. Use the code cell below, and save your initialized model as the variable model_transfer
.
import torchvision.models as models
+import torch.nn as nn
+
+## TODO: Specify model architecture
+model_transfer = models.resnet50(pretrained=True)
+
+# Freeze parameters so we don't backprop through them
+for param in model_transfer.parameters():
+ param.requires_grad = False
+
+# Replace the last fully connected layer with a Linnear layer with 133 out features
+model_transfer.fc = nn.Linear(2048, 133)
+
+if use_cuda:
+ model_transfer = model_transfer.cuda()
+
+print(model_transfer)
+
ResNet( + (conv1): Conv2d(3, 64, kernel_size=(7, 7), stride=(2, 2), padding=(3, 3), bias=False) + (bn1): BatchNorm2d(64, eps=1e-05, momentum=0.1, affine=True, track_running_stats=True) + (relu): ReLU(inplace=True) + (maxpool): MaxPool2d(kernel_size=3, stride=2, padding=1, dilation=1, ceil_mode=False) + (layer1): Sequential( + (0): Bottleneck( + (conv1): Conv2d(64, 64, kernel_size=(1, 1), stride=(1, 1), bias=False) + (bn1): BatchNorm2d(64, eps=1e-05, momentum=0.1, affine=True, track_running_stats=True) + (conv2): Conv2d(64, 64, kernel_size=(3, 3), stride=(1, 1), padding=(1, 1), bias=False) + (bn2): BatchNorm2d(64, eps=1e-05, momentum=0.1, affine=True, track_running_stats=True) + (conv3): Conv2d(64, 256, kernel_size=(1, 1), stride=(1, 1), bias=False) + (bn3): BatchNorm2d(256, eps=1e-05, momentum=0.1, affine=True, track_running_stats=True) + (relu): ReLU(inplace=True) + (downsample): Sequential( + (0): Conv2d(64, 256, kernel_size=(1, 1), stride=(1, 1), bias=False) + (1): BatchNorm2d(256, eps=1e-05, momentum=0.1, affine=True, track_running_stats=True) + ) + ) + (1): Bottleneck( + (conv1): Conv2d(256, 64, kernel_size=(1, 1), stride=(1, 1), bias=False) + (bn1): BatchNorm2d(64, eps=1e-05, momentum=0.1, affine=True, track_running_stats=True) + (conv2): Conv2d(64, 64, kernel_size=(3, 3), stride=(1, 1), padding=(1, 1), bias=False) + (bn2): BatchNorm2d(64, eps=1e-05, momentum=0.1, affine=True, track_running_stats=True) + (conv3): Conv2d(64, 256, kernel_size=(1, 1), stride=(1, 1), bias=False) + (bn3): BatchNorm2d(256, eps=1e-05, momentum=0.1, affine=True, track_running_stats=True) + (relu): ReLU(inplace=True) + ) + (2): Bottleneck( + (conv1): Conv2d(256, 64, kernel_size=(1, 1), stride=(1, 1), bias=False) + (bn1): BatchNorm2d(64, eps=1e-05, momentum=0.1, affine=True, track_running_stats=True) + (conv2): Conv2d(64, 64, kernel_size=(3, 3), stride=(1, 1), padding=(1, 1), bias=False) + (bn2): BatchNorm2d(64, eps=1e-05, momentum=0.1, affine=True, track_running_stats=True) + (conv3): Conv2d(64, 256, kernel_size=(1, 1), stride=(1, 1), bias=False) + (bn3): BatchNorm2d(256, eps=1e-05, momentum=0.1, affine=True, track_running_stats=True) + (relu): ReLU(inplace=True) + ) + ) + (layer2): Sequential( + (0): Bottleneck( + (conv1): Conv2d(256, 128, kernel_size=(1, 1), stride=(1, 1), bias=False) + (bn1): BatchNorm2d(128, eps=1e-05, momentum=0.1, affine=True, track_running_stats=True) + (conv2): Conv2d(128, 128, kernel_size=(3, 3), stride=(2, 2), padding=(1, 1), bias=False) + (bn2): BatchNorm2d(128, eps=1e-05, momentum=0.1, affine=True, track_running_stats=True) + (conv3): Conv2d(128, 512, kernel_size=(1, 1), stride=(1, 1), bias=False) + (bn3): BatchNorm2d(512, eps=1e-05, momentum=0.1, affine=True, track_running_stats=True) + (relu): ReLU(inplace=True) + (downsample): Sequential( + (0): Conv2d(256, 512, kernel_size=(1, 1), stride=(2, 2), bias=False) + (1): BatchNorm2d(512, eps=1e-05, momentum=0.1, affine=True, track_running_stats=True) + ) + ) + (1): Bottleneck( + (conv1): Conv2d(512, 128, kernel_size=(1, 1), stride=(1, 1), bias=False) + (bn1): BatchNorm2d(128, eps=1e-05, momentum=0.1, affine=True, track_running_stats=True) + (conv2): Conv2d(128, 128, kernel_size=(3, 3), stride=(1, 1), padding=(1, 1), bias=False) + (bn2): BatchNorm2d(128, eps=1e-05, momentum=0.1, affine=True, track_running_stats=True) + (conv3): Conv2d(128, 512, kernel_size=(1, 1), stride=(1, 1), bias=False) + (bn3): BatchNorm2d(512, eps=1e-05, momentum=0.1, affine=True, track_running_stats=True) + (relu): ReLU(inplace=True) + ) + (2): Bottleneck( + (conv1): Conv2d(512, 128, kernel_size=(1, 1), stride=(1, 1), bias=False) + (bn1): BatchNorm2d(128, eps=1e-05, momentum=0.1, affine=True, track_running_stats=True) + (conv2): Conv2d(128, 128, kernel_size=(3, 3), stride=(1, 1), padding=(1, 1), bias=False) + (bn2): BatchNorm2d(128, eps=1e-05, momentum=0.1, affine=True, track_running_stats=True) + (conv3): Conv2d(128, 512, kernel_size=(1, 1), stride=(1, 1), bias=False) + (bn3): BatchNorm2d(512, eps=1e-05, momentum=0.1, affine=True, track_running_stats=True) + (relu): ReLU(inplace=True) + ) + (3): Bottleneck( + (conv1): Conv2d(512, 128, kernel_size=(1, 1), stride=(1, 1), bias=False) + (bn1): BatchNorm2d(128, eps=1e-05, momentum=0.1, affine=True, track_running_stats=True) + (conv2): Conv2d(128, 128, kernel_size=(3, 3), stride=(1, 1), padding=(1, 1), bias=False) + (bn2): BatchNorm2d(128, eps=1e-05, momentum=0.1, affine=True, track_running_stats=True) + (conv3): Conv2d(128, 512, kernel_size=(1, 1), stride=(1, 1), bias=False) + (bn3): BatchNorm2d(512, eps=1e-05, momentum=0.1, affine=True, track_running_stats=True) + (relu): ReLU(inplace=True) + ) + ) + (layer3): Sequential( + (0): Bottleneck( + (conv1): Conv2d(512, 256, kernel_size=(1, 1), stride=(1, 1), bias=False) + (bn1): BatchNorm2d(256, eps=1e-05, momentum=0.1, affine=True, track_running_stats=True) + (conv2): Conv2d(256, 256, kernel_size=(3, 3), stride=(2, 2), padding=(1, 1), bias=False) + (bn2): BatchNorm2d(256, eps=1e-05, momentum=0.1, affine=True, track_running_stats=True) + (conv3): Conv2d(256, 1024, kernel_size=(1, 1), stride=(1, 1), bias=False) + (bn3): BatchNorm2d(1024, eps=1e-05, momentum=0.1, affine=True, track_running_stats=True) + (relu): ReLU(inplace=True) + (downsample): Sequential( + (0): Conv2d(512, 1024, kernel_size=(1, 1), stride=(2, 2), bias=False) + (1): BatchNorm2d(1024, eps=1e-05, momentum=0.1, affine=True, track_running_stats=True) + ) + ) + (1): Bottleneck( + (conv1): Conv2d(1024, 256, kernel_size=(1, 1), stride=(1, 1), bias=False) + (bn1): BatchNorm2d(256, eps=1e-05, momentum=0.1, affine=True, track_running_stats=True) + (conv2): Conv2d(256, 256, kernel_size=(3, 3), stride=(1, 1), padding=(1, 1), bias=False) + (bn2): BatchNorm2d(256, eps=1e-05, momentum=0.1, affine=True, track_running_stats=True) + (conv3): Conv2d(256, 1024, kernel_size=(1, 1), stride=(1, 1), bias=False) + (bn3): BatchNorm2d(1024, eps=1e-05, momentum=0.1, affine=True, track_running_stats=True) + (relu): ReLU(inplace=True) + ) + (2): Bottleneck( + (conv1): Conv2d(1024, 256, kernel_size=(1, 1), stride=(1, 1), bias=False) + (bn1): BatchNorm2d(256, eps=1e-05, momentum=0.1, affine=True, track_running_stats=True) + (conv2): Conv2d(256, 256, kernel_size=(3, 3), stride=(1, 1), padding=(1, 1), bias=False) + (bn2): BatchNorm2d(256, eps=1e-05, momentum=0.1, affine=True, track_running_stats=True) + (conv3): Conv2d(256, 1024, kernel_size=(1, 1), stride=(1, 1), bias=False) + (bn3): BatchNorm2d(1024, eps=1e-05, momentum=0.1, affine=True, track_running_stats=True) + (relu): ReLU(inplace=True) + ) + (3): Bottleneck( + (conv1): Conv2d(1024, 256, kernel_size=(1, 1), stride=(1, 1), bias=False) + (bn1): BatchNorm2d(256, eps=1e-05, momentum=0.1, affine=True, track_running_stats=True) + (conv2): Conv2d(256, 256, kernel_size=(3, 3), stride=(1, 1), padding=(1, 1), bias=False) + (bn2): BatchNorm2d(256, eps=1e-05, momentum=0.1, affine=True, track_running_stats=True) + (conv3): Conv2d(256, 1024, kernel_size=(1, 1), stride=(1, 1), bias=False) + (bn3): BatchNorm2d(1024, eps=1e-05, momentum=0.1, affine=True, track_running_stats=True) + (relu): ReLU(inplace=True) + ) + (4): Bottleneck( + (conv1): Conv2d(1024, 256, kernel_size=(1, 1), stride=(1, 1), bias=False) + (bn1): BatchNorm2d(256, eps=1e-05, momentum=0.1, affine=True, track_running_stats=True) + (conv2): Conv2d(256, 256, kernel_size=(3, 3), stride=(1, 1), padding=(1, 1), bias=False) + (bn2): BatchNorm2d(256, eps=1e-05, momentum=0.1, affine=True, track_running_stats=True) + (conv3): Conv2d(256, 1024, kernel_size=(1, 1), stride=(1, 1), bias=False) + (bn3): BatchNorm2d(1024, eps=1e-05, momentum=0.1, affine=True, track_running_stats=True) + (relu): ReLU(inplace=True) + ) + (5): Bottleneck( + (conv1): Conv2d(1024, 256, kernel_size=(1, 1), stride=(1, 1), bias=False) + (bn1): BatchNorm2d(256, eps=1e-05, momentum=0.1, affine=True, track_running_stats=True) + (conv2): Conv2d(256, 256, kernel_size=(3, 3), stride=(1, 1), padding=(1, 1), bias=False) + (bn2): BatchNorm2d(256, eps=1e-05, momentum=0.1, affine=True, track_running_stats=True) + (conv3): Conv2d(256, 1024, kernel_size=(1, 1), stride=(1, 1), bias=False) + (bn3): BatchNorm2d(1024, eps=1e-05, momentum=0.1, affine=True, track_running_stats=True) + (relu): ReLU(inplace=True) + ) + ) + (layer4): Sequential( + (0): Bottleneck( + (conv1): Conv2d(1024, 512, kernel_size=(1, 1), stride=(1, 1), bias=False) + (bn1): BatchNorm2d(512, eps=1e-05, momentum=0.1, affine=True, track_running_stats=True) + (conv2): Conv2d(512, 512, kernel_size=(3, 3), stride=(2, 2), padding=(1, 1), bias=False) + (bn2): BatchNorm2d(512, eps=1e-05, momentum=0.1, affine=True, track_running_stats=True) + (conv3): Conv2d(512, 2048, kernel_size=(1, 1), stride=(1, 1), bias=False) + (bn3): BatchNorm2d(2048, eps=1e-05, momentum=0.1, affine=True, track_running_stats=True) + (relu): ReLU(inplace=True) + (downsample): Sequential( + (0): Conv2d(1024, 2048, kernel_size=(1, 1), stride=(2, 2), bias=False) + (1): BatchNorm2d(2048, eps=1e-05, momentum=0.1, affine=True, track_running_stats=True) + ) + ) + (1): Bottleneck( + (conv1): Conv2d(2048, 512, kernel_size=(1, 1), stride=(1, 1), bias=False) + (bn1): BatchNorm2d(512, eps=1e-05, momentum=0.1, affine=True, track_running_stats=True) + (conv2): Conv2d(512, 512, kernel_size=(3, 3), stride=(1, 1), padding=(1, 1), bias=False) + (bn2): BatchNorm2d(512, eps=1e-05, momentum=0.1, affine=True, track_running_stats=True) + (conv3): Conv2d(512, 2048, kernel_size=(1, 1), stride=(1, 1), bias=False) + (bn3): BatchNorm2d(2048, eps=1e-05, momentum=0.1, affine=True, track_running_stats=True) + (relu): ReLU(inplace=True) + ) + (2): Bottleneck( + (conv1): Conv2d(2048, 512, kernel_size=(1, 1), stride=(1, 1), bias=False) + (bn1): BatchNorm2d(512, eps=1e-05, momentum=0.1, affine=True, track_running_stats=True) + (conv2): Conv2d(512, 512, kernel_size=(3, 3), stride=(1, 1), padding=(1, 1), bias=False) + (bn2): BatchNorm2d(512, eps=1e-05, momentum=0.1, affine=True, track_running_stats=True) + (conv3): Conv2d(512, 2048, kernel_size=(1, 1), stride=(1, 1), bias=False) + (bn3): BatchNorm2d(2048, eps=1e-05, momentum=0.1, affine=True, track_running_stats=True) + (relu): ReLU(inplace=True) + ) + ) + (avgpool): AdaptiveAvgPool2d(output_size=(1, 1)) + (fc): Linear(in_features=2048, out_features=133, bias=True) +) ++
Question 5: Outline the steps you took to get to your final CNN architecture and your reasoning at each step. Describe why you think the architecture is suitable for the current problem.
+ +Answer:
+Use the next code cell to specify a loss function and optimizer. Save the chosen loss function as criterion_transfer
, and the optimizer as optimizer_transfer
below.
criterion_transfer = nn.CrossEntropyLoss()
+optimizer_transfer = optim.Adam(model_transfer.fc.parameters(), lr=0.001)
+
Train and validate your model in the code cell below. Save the final model parameters at filepath 'model_transfer.pt'
.
# train the model
+model_transfer = train(10, transfer_loaders, model_transfer, optimizer_transfer, criterion_transfer, use_cuda, 'model_transfer.pt')
+# train(n_epochs, loaders_transfer, model_transfer, optimizer_transfer, criterion_transfer, use_cuda, 'model_transfer.pt')
+
+# load the model that got the best validation accuracy (uncomment the line below)
+#model_transfer.load_state_dict(torch.load('model_transfer.pt'))
+
Epoch: 1 Sec. spent in epoch 2139.72 Training Loss: 2.699786 Validation Loss: 0.951117 +Validation loss decreased (inf --> 0.951117). Saving model +Epoch: 2 Sec. spent in epoch 2060.82 Training Loss: 1.423272 Validation Loss: 0.631965 +Validation loss decreased (0.951116740703582763671875 --> 0.631965). Saving model +Epoch: 3 Sec. spent in epoch 2031.03 Training Loss: 1.261887 Validation Loss: 0.695990 +Epoch: 4 Sec. spent in epoch 2085.20 Training Loss: 1.218193 Validation Loss: 0.667064 +Epoch: 5 Sec. spent in epoch 2079.26 Training Loss: 1.121667 Validation Loss: 0.571727 +Validation loss decreased (0.631964504718780517578125 --> 0.571727). Saving model +Epoch: 6 Sec. spent in epoch 2199.12 Training Loss: 1.113447 Validation Loss: 0.547890 +Validation loss decreased (0.57172691822052001953125 --> 0.547890). Saving model +Epoch: 7 Sec. spent in epoch 8956.73 Training Loss: 1.064585 Validation Loss: 0.620886 +Epoch: 8 Sec. spent in epoch 2927.90 Training Loss: 1.064403 Validation Loss: 0.576969 +Epoch: 9 Sec. spent in epoch 2418.39 Training Loss: 1.041807 Validation Loss: 0.530868 +Validation loss decreased (0.547890186309814453125 --> 0.530868). Saving model +Epoch: 10 Sec. spent in epoch 2132.96 Training Loss: 1.040170 Validation Loss: 0.520499 +Validation loss decreased (0.530868113040924072265625 --> 0.520499). Saving model ++
Try out your model on the test dataset of dog images. Use the code cell below to calculate and print the test loss and accuracy. Ensure that your test accuracy is greater than 60%.
+ +test(transfer_loaders, model_transfer, criterion_transfer, use_cuda)
+
Test Loss: 0.553724 + + +Test Accuracy: 83% (701/836) ++
Write a function that takes an image path as input and returns the dog breed (Affenpinscher
, Afghan hound
, etc) that is predicted by your model.
### TODO: Write a function that takes a path to an image as input
+### and returns the dog breed that is predicted by the model.
+
+# list of class names by index, i.e. a name can be accessed like class_names[0]
+class_names = [item[4:].replace("_", " ") for item in train_path.classes]
+
+def predict_breed_transfer(img_path):
+ # load the image and return the predicted breed
+ image = Image.open(img_path)
+
+ min_img_size = 224
+ # The min size, as noted in the PyTorch pretrained models doc, is 224 px.
+ transform = transforms.Compose([transforms.Resize(min_img_size), transforms.CenterCrop(min_img_size), transforms.ToTensor(),
+ transforms.Normalize(mean=[0.485, 0.456, 0.406], std=[0.229, 0.224, 0.225])])
+
+
+ image = transform(image)
+ image = image.unsqueeze(0)
+ if use_cuda:
+ image = image.to('cuda')
+
+ ## Return the *index* of the predicted class for that image
+
+ output = model_transfer(image)
+
+ if use_cuda:
+ output = output.to('cpu')
+
+ return class_names[output.data.numpy().argmax()]# predicted class index
+
Write an algorithm that accepts a file path to an image and first determines whether the image contains a human, dog, or neither. Then,
+You are welcome to write your own functions for detecting humans and dogs in images, but feel free to use the face_detector
and dog_detector
functions developed above. You are required to use your CNN from Step 4 to predict dog breed.
Some sample output for our algorithm is provided below, but feel free to design your own user experience!
+### TODO: Write your algorithm.
+### Feel free to use as many code cells as needed.
+
+def run_app(img_path):
+ ## handle cases for a human face, dog, and neither
+ img = Image.open(img_path)
+ plt.imshow(img)
+ plt.show()
+
+ if dog_detector(img_path) is True:
+ prediction = predict_breed_transfer(img_path)
+ print("Dog Detected!\nIt looks like a {0}".format(prediction))
+ elif face_detector(img_path) > 0:
+ prediction = predict_breed_transfer(img_path)
+ print("Hello, human!\nIf you were a dog... You look like a {0}".format(prediction))
+ else:
+ print("Urm... Are you an alien?")
+
+
# Load custom test images
+human_files = np.array(glob("./lfw/Testing/*"))
+dog_files = np.array(glob("./dogImages/test/Testing/*"))
+
+# print number of images in each dataset
+print('There are %d total human images.' % len(human_files))
+print('There are %d total dog images.' % len(dog_files))
+
There are 15 total human images. +There are 15 total dog images. ++
In this section, you will take your new algorithm for a spin! What kind of dog does the algorithm think that you look like? If you have a dog, does it predict your dog's breed accurately? If you have a cat, does it mistakenly think that your cat is a dog?
+Test your algorithm at least six images on your computer. Feel free to use any images you like. Use at least two human and two dog images.
+Question 6: Is the output better than you expected :) ? Or worse :( ? Provide at least three possible points of improvement for your algorithm.
+ +Answer:
+## TODO: Execute your algorithm from Step 6 on
+## at least 6 images on your computer.
+## Feel free to use as many code cells as needed.
+
+## suggested code, below
+for file in np.hstack((human_files[:15], dog_files[:15])):
+ run_app(file)
+
Hello, human! +If you were a dog... You look like a Dogue de bordeaux ++
Hello, human! +If you were a dog... You look like a Bulldog ++
Hello, human! +If you were a dog... You look like a Dogue de bordeaux ++
Hello, human! +If you were a dog... You look like a Chinese crested ++
Hello, human! +If you were a dog... You look like a Dogue de bordeaux ++
Hello, human! +If you were a dog... You look like a Belgian malinois ++
Hello, human! +If you were a dog... You look like a Dogue de bordeaux ++
Hello, human! +If you were a dog... You look like a Dogue de bordeaux ++
Hello, human! +If you were a dog... You look like a American water spaniel ++
Hello, human! +If you were a dog... You look like a Great dane ++
Hello, human! +If you were a dog... You look like a Doberman pinscher ++
Hello, human! +If you were a dog... You look like a Doberman pinscher ++
Hello, human! +If you were a dog... You look like a Dogue de bordeaux ++
Hello, human! +If you were a dog... You look like a Dogue de bordeaux ++
Hello, human! +If you were a dog... You look like a Dogue de bordeaux ++
Dog Detected! +It looks like a Beagle ++
Dog Detected! +It looks like a Belgian tervuren ++
Dog Detected! +It looks like a Bluetick coonhound ++
Dog Detected! +It looks like a Bouvier des flandres ++
Dog Detected! +It looks like a Bulldog ++
Dog Detected! +It looks like a Lakeland terrier ++
Dog Detected! +It looks like a Miniature schnauzer ++
Dog Detected! +It looks like a Miniature schnauzer ++
Dog Detected! +It looks like a Old english sheepdog ++
Dog Detected! +It looks like a Papillon ++
Dog Detected! +It looks like a Parson russell terrier ++
Dog Detected! +It looks like a Pembroke welsh corgi ++
Dog Detected! +It looks like a Pembroke welsh corgi ++
Dog Detected! +It looks like a Cardigan welsh corgi ++
Dog Detected! +It looks like a Pomeranian ++
+