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metadata
title: ERA S12
emoji: πŸŒ–
colorFrom: green
colorTo: purple
sdk: gradio
sdk_version: 3.39.0
app_file: app.py
pinned: false
license: mit

CustomResNet with GradCAM - Interactive Interface

This project Impliments a simple Gradio interface to perform inference on CustomResNet model and generate the GradCAM visualization results.

Task :

The task involves performing classification on the CIFAR-10 dataset using the Custom ResNet model built with PyTorch and PyTorch Lightning.

Files :

  1. requirements.txt: Contains the necessary packages required for installation.
  2. custom_resnet.py: Contains the CustomResNet model architecture.
  3. CustomResNet.pth: Trained model checkpoint file containing model weights.
  4. examples/: Folder containing example images (e.g., cat.jpg, car.jpg, etc.).
  5. app.py: Contains the Gradio code for the interactive interface. Users can select input images or examples and view GradCAM images, predictions, and top-k classes.
  6. misclassified_images/: Folder containing misclassified images.

Implementation

The following features are implemented using Gradio:

  1. GradCAM Images: Users are prompted to choose whether they want to view GradCAM images. They can specify the number of images, the target layer, and adjust opacity.
  2. Misclassified Images: Users have the option to view misclassified images and apply GradCAM visualization to them.
  3. Upload and Select Images: Users can upload new images or select from a set of 10 example images.
  4. Top Classes: Users can choose how many top classes they want to see in the prediction results.

Usage

  1. Run the app.py script to launch the interactive Gradio interface.