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Cats And Dogs Image Classification in Pytorch


The Dogs vs. Cats dataset is a standard computer vision dataset that involves classifying photos as either containing a dog or cat.Our basic task is to create an algorithm to classify whether an image contains a dog or a cat. The input for this task is images of dogs or cats from training dataset, while the output is the classification accuracy on test dataset.[1]

Installation


- pip
>> pip install -r requirement.txt

- Conda
>> conda env create -f environment.yml
>> conda activate cats_and_dogs

Downloading Dataset


>> cd data
>> bash download.sh

Usage

>> python main.py -h
   usage: main.py [-h] [-file_dir FILE_DIR] [-batch_size BATCH_SIZE] [-lr LR]
          [-epoch EPOCH] [-model {SIMPLE,DEEPER}]

#Example

>> python main.py -epoch 10 -model 'DEEPER'

Tensorboard Visualizations


>> tensorboard --logdir='TensorBoard/runs/'

Images


Images

Architecture


Architecture

Train and test Loss


Test Loss

Train and test Loss

Visualizations


Visualizations

Output


output

Output


output

output

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