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  1. Image generation using autoencoder vs. variational autoencoder

    Sep 17, 2021 · I think that the autoencoder (AE) generates the same new images every time we run the model because it maps the input image to a single point in the latent space. On the …

  2. python - Reducing Losses of Autoencoder - Stack Overflow

    May 26, 2020 · Because you are forcing the encoder to represent an information of higher dimension with an information with lower dimension. So the lower the latent dimension is, the …

  3. convolution - How to implement a 1D Convolutional Auto …

    Mar 15, 2018 · The input to the autoencoder is then --> (730,128,1) But when I plot the original signal against the ...

  4. python - LSTM Autoencoder - Stack Overflow

    Jun 20, 2017 · I'm trying to build a LSTM autoencoder with the goal of getting a fixed sized vector from a sequence, which represents the sequence as good as possible. This autoencoder …

  5. python 2.7 - keras autoencoder vs PCA - Stack Overflow

    I am playing with a toy example to understand PCA vs keras autoencoder I have the following code for understanding PCA: import numpy as np import matplotlib.pyplot as plt from …

  6. machine learning - Is there any sense to use autoencoder for …

    Dec 9, 2016 · You train the second autoencoder without touching the first autoencoder. This helps to keep the number of parameters low, and thus makes training simpler and faster. After …

  7. How UNET is different from simple autoencoders? - Stack Overflow

    Aug 4, 2022 · UNET architecture is like first half encoder and second half decoder . There are different variations of autoencoders like sparse , variational etc. They all compress and …

  8. how to improve the accuracy of autoencoder? - Stack Overflow

    Feb 12, 2019 · I have an autoencoder and I checked the accuracy of my model with different solutions like changing the number of conv layer and increase them, add or remove Batch …

  9. Variational Autoencoders: MSE vs BCE - Stack Overflow

    I'm working with a Variational Autoencoder and I have seen that there are people who uses MSE Loss and some people who uses BCE Loss, does anyone know if one is more correct that the …

  10. Why my autoencoder model is not learning? - Stack Overflow

    Apr 15, 2020 · Your architecture doesn't have any sense. If you want to create an autoencoder you need to understand that you're going to reverse process after encoding. That means that if …

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