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AE-w.-Bottleneck-Residual-Blocks
AE-w.-Bottleneck-Residual-Blocks PublicA CNN based autoencoder with Bottleneck Residual blocks on cifar10. May add perceptual loss and/or try out different loss functions later, will use L2 as the default.
Jupyter Notebook 1
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Beta-VAE-on-MNIST
Beta-VAE-on-MNIST PublicStudying the effect of varying beta (coefficient of the KL term) in a beta-VAE on the MNIST dataset
Jupyter Notebook 2
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L2-vs-L1-vs-CB-loss-in-deep-CNN-based-AE-on-cifar10
L2-vs-L1-vs-CB-loss-in-deep-CNN-based-AE-on-cifar10 PublicComparing performance of AE and VAE using the Continuous Bernoulli loss and using mse loss, on the unlabelled part of the stl10 image dataset
Jupyter Notebook 2
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