Autoencoder dimensionality reduction, EMD-Manhattan metrics comparison and classifier based clustering on MNIST dataset.
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Updated
Mar 5, 2021 - C++
Autoencoder dimensionality reduction, EMD-Manhattan metrics comparison and classifier based clustering on MNIST dataset.
3 part project: A. bottleneck autoencoder, B. manhattan distance, C. earth mover's distance
PyTorch Wrapper for Earth-Mover-Distance (EMD) for 3D point cloud regression
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Reducing MNIST image data dimensionality by extracting the latent space representations of an Autoencoder model. Comparing these latent space representations to the default MNIST representation
Autoencoder dimensionality reduction, EMD-Manhattan metrics comparison and classifier based clustering on MNIST dataset
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