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LeNet5 architecture implementation using pytorch, network parameter optimization and performance evaluation on dataset with Symmetric Label Noise

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VishalP227/LeNet5-CNN

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Convolution Neural Networks (LeNet5)

Project Description

The main goals of this project are as listed below:

  • Implement and understand CNN architecture, specifically LeNet5
  • Training the convolutional nerual network on MNIST, Fashion MNIST and CIFAR 10 dataset
  • Network parameters (learning rate, momentum, training batch size) tuning
  • Evaluation and Ablation study: Analyze Receiver Operating characteristic Curve (ROC) and Area under curve (AUC) metrics
  • Analyse classification performance on noisy data (by intrducing symmetric label noise)

Please consult the problem statement and project report documents for more details

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LeNet5 architecture implementation using pytorch, network parameter optimization and performance evaluation on dataset with Symmetric Label Noise

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