Questions tagged [autoencoder]

An autoencoder, autoassociator or Diabolo network is an artificial neural network used for learning efficient codings. As such, it is part of the dimensionality reduction algorithms.

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Autoencoder in fastai

I'm trying to build an autoencoder with fast.ai version 1.0.52 and struggling with how to set labels to be equal to original images. I was following this blog post: https://alanbertl.com/autoencoder-...
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How to make tied weight Autoenocder?

I want to make tied weight Autoenocder. For example, I have a single hidden layer for Autoencoder: input_layer hidden_layer output layer So, I want to make tied weight, if W is weight between ...
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Issue with tf.signal.irfft output in Keras Unet model

I have converted this Keras implementation of Unet from Github into a 1D version with the hopes of processing mono audio files. I have also added the tf.signal.rfft, via lambda, as well as tf.signal....
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What is Zero-inflated layer and how to implement it on pytorch?

I am building a variational autoencoder for dimension reduction of single-cell RNA-Seq data. I managed to plot clear clusters with traditional autoencoder, but my VAE is not working. The loss ...
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How can I separate voice-related feature[not words] from the speech of different people and normalize it (something like z-score)? [on hold]

I have a list of speech voice from different people that are fed into an LSTM (Long short Term memory) based classifier since everyone has it's own voice characteristics which are independent of the ...
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LSTM autoencoder dimensionality reduction constant output

I'm trying to embed a dataset of variable-size sequences of integer in fixed length vectors using a LSTM autoencoder but the model continues to output constant vector even if the sequences are ...
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Fine tunning deep autoencoder model for mnist

I have developed a 3 layer deep autoencoder model for the mnist dataset as I am just practicing on this toy dataset as I am beginner in this fine-tuning paradigm Following is the code from keras ...
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Big values of loss when using vae_loss

I tried to implement a sequence to sequence model with variational autoencoder, when i used the vae loss, the loss became very big and the accuracy not good. i khink that the problem is in the ...
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Autoencoder accuracy not improving using keras

I am trying to create a convolutional autoencoder with keras for expression classification but the accuracy gets stuck after 2-3 epochs at 0.10 (10% max) during training. Is this because of problem in ...
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How to make the decoder output shape be equal to the input image shape?

I am trying to find out that: decoder.output_shape[1:]==IMG_SHAPE. I have the following function which I have programmed. When I try to run decoder.output_shape[1:]==IMG_SHAPE, I find that my image ...
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how to apply the autoencoder and decoders for text classificaation using LSTM

I am a beginner to CNN,RNN models, I am trying classifying the twitter data using autoencoders, BUt I got some errors on that, please help me how to solve it. Here my input shapes: from keras....
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Element not part of the graph when using VGG for data generation and loss calculation

I have a VGG19 encoder which takes an input image y of (256,256,3) and returns a tensor of dimension (32,32, 512) from conv-4-1 layer of vgg. I need to turn it into a numpy array to apply some ...
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How to create an autoencoder where each layer of encoder should represent the same as a layer of the decoder

I want to build an autoencoder where each layer in the encoder has the same meaning as a correspondent layer in the decoder. So if the autoencoder is perfectly trained, the values of those layers ...
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Intuition behind fluctuating training loss

I am trying to build a convolutional autoencoder for 28x28x5 images. Below is the summary of my model: Layer (type) Output Shape Param # ==================================...
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1answer
32 views

InvalidType: Invalid operation is performed

I am trying to write a stacked autoencoder. Since this a stacked autoencoder we need to train the first autoencoder and pass the weights to the second autoencoder. So during training we need to define ...
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Implementing old Chainer code to be compatible with chainer 5

I am trying to write old chainer code to run with trainer extension or manual training loop by dropping train argument. [AutoEncoder/StackedAutoEncoder/Regression.py](https://github.com/quolc/...
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Transforming Train argument in Chainer 5

How can I change this train argument(older version code) and use this in trainer extensions. What are the necessary changes to be made to use this code in Chainer: 5.4.0. ValueError: train argument ...
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How to make an auto-encoder in Keras for wav audio files

I have been looking into auto encoder neural networks lately, and I came across this tutorial describing how to make an auto encoder for image files in Keras: https://blog.keras.io/building-...
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“CUDA error: invalid device ordinal” when training variational auto-encoder

When i run my code for autoencoder i get this error: test_and_train.py:None (test_and_train.py) test_and_train.py:102: in <module> model_net = VoxceptionNet(n_classes=40).to(device) ..\..\.....
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42 views

Correct way to calculate MSE for autoencoders with batch-training

Suppose you have a network representing an autoencoder (AE). Let's assume it has 90 inputs/outputs. I want to batch-train it with batches of size 100. I will denote my input with x and my output with ...
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34 views

keras predict only gives 1 but loss value decrease

I'm trying to implement a JSCC autoencoder using Keras on CIfar-10 dataset. but the values of the output image is always just 1. I'm new to Keras and I didn't find out how to fix this. model = ...
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Autoencoder: Decoder has not same size as encoder

If I build the decoder as a mirror of encoder the output size of the last layer does not match. This is the model summary: Model: "model" ...
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1answer
32 views

How to feed time series data into an autoencoder network for feature extraction?

I am trying to create an autoencoder from scratch for my dataset. It is a variational autoencoder for feature extraction. I am pretty new to machine learning and I would like to know how to feed my ...
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AttributeError: 'NoneType' object has no attribute '_inbound_nodes' in Autoencoders in Keras

I am not able to solve the following error, please accept my apologies if it sounds naive, I am very new to Keras. The output of the encoder is actually a complex value, so each output is real and ...
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pytorch: how can I use picture as label in dataloader?

I want to do some image reconstruction using autoencoders in pytorch, however, I didn't find a way to use image as label for an input image.(the label image is different from original ones) I've ...
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Building layer wise model for Encoding-Decoding Image

I am writing an autoencoder model for an image encoding-decoding problem. I want to understand the node distribution in each layer of the model suitable for images. For the below code I am using 10 ...
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1answer
25 views

Keras autoencoder outputting wrong shape

I'm trying to build a deep convolutional autoencoder in Keras, but it keeps outputting the wrong shape. Code: def build_network(input_shape): input_input = Input(shape=input_shape) #...
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32 views

Stacked Autoencoder

I have a basic autoencoder structure. I want to change it to a stacked autoencoder. From what I know the stacked AE differs in 2 ways: It is made up of layers of sparse vanilla AEs It does layer-...
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1answer
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Why does tf.keras.layers.Conv2DTranspose need no output_shape compared to tf.nn.conv2d_transpose?

I am missing something basic here. But I always used the tf.nn API for transpose convolution, where I have to specify the output shape, because it is ambiguous(Link). However, for TF 2.0 I switch to ...
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1answer
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Chainer Autoencoder

I am trying to write a vanilla autoencoder for compressing 13 images. However I am getting the following error: ValueError: train argument is not supported anymore. Use chainer.using_config The ...
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Is this implementation of VQ-VAE for audio incorrect?

I was hoping to find an open-source implementation of the Neural Discrete Representation Learning paper for audio. I am looking at this github repository. The paper says that "the encoder has 6 ...
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How can I change my code to incorporate multiple hidden layers while implementing contractive loss in contractive autoencoders?

I've constructed a single layer autoencoder that uses contractive loss (the code is shown). How can I modify the code so as to incorporate multiple hidden layers? What weights will I need to use? def ...
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1answer
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Unsure about the result my autoencoder neural network is giving me from Keras predict

I'm trying to build an Autoencoder neural network for finding outliers in a single column list of text. My input have 138 lines and they look like this: amaze_header_2.png amaze_header.png ...
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Reconstructing images from Conditional Variational Autoencoders

I have coded a Conditional Variational Autoencoder with a very similar architecture as the one described in here https://github.com/nnormandin/Conditional_VAE/blob/master/Conditional_VAE.ipynb The ...
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Has anyone succeeded to (intentionally) overfit the neural network with MNIST?

I am currently studying myself with a subject "representational(expressive power) of neural network" and trying to intentionally fully overfit the neural network which means that at least the model ...
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How to explain get_weight with autoencoder in keras?

I built an autoencoder model of three layers with 9 5 9. Input dim =9, encoder dim =5, output dim=9 When I get the model weights, weight1=autoencoder.layers[1].get_weights() weight2=autoencoder....
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keras model not training while using half precision

When I train my model using default precision in keras, the model gets trained. When I use the following code to convert it to half precision, I don't get similar results. from keras import backend ...
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Loss function obtained from Variational Autoencoder

I am trying out different Autoencoder variants on text data to know the reconstruction loss and reduce the dimension of data of course. When trying out Deep and Convolutional Autoencoders, the ...
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1answer
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Resolve exploding gradient in VAE

How do you resolve exploding gradient in a deep generative model(VAE)? NB: the data-set contains a lot of NaNs values in the columns
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1answer
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Autoencoder in Tensorflow: save and load network + change hidden layer

I coded an Autoencoder in Tensorflow. I train the Autoencoder, and then need to save the trained network. Subsequently, I need to reload the trained network, and change the innermost hidden layer. I ...
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How to make sure con1D's output_shape is same as input_shape with time series in keras autoencoder?

Conv1D output shape incorrect in keras autoencoder model when running autoencoder fit. I try to use keras autoencoder model to compress and decompress my time-series data. but when I change the ...
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1answer
25 views

One-Hot Encode Features With Multiple Labels

In python we can make One-Hot Encode Features With Multiple Labels Example: https://chrisalbon.com/machine_learning/preprocessing_structured_data/one-hot_encode_features_with_multiple_labels/ I have ...
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How to find average loss in autoencoder

class Autoencoder: def init(self, hidden_dim=np.array([1,2,3]), epoch=250, learning_rate=0.001): self.epoch = epoch #A self.learning_rate = learning_rate #B X = tf.placeholder(...
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How to connect pretraining autoencoder with main neural network?

I'm working around with cnn and would love to increase its precision by pretrain my data with an autoencoder, and use the encoder bias and weights for my cnn. My problem is the connection between ...
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Loss and accuracy converged but model still improves

I'm using tensorflow-gpu 1.9.0 for compatibility with the versions we have of CUDA and cuDNN on our GPU machines. This might be relevant. I have a Convolutional Autoencoder for feature extraction of ...
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Autoencoder in TensorFlow

I am building a Tensorflow implementation of an autoencoder for time series. I have a 2000 time series, each of which is a series of 501-time components. These time series are stored in a '.mat' file, ...
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Loading RBM weights into autoencoders

I am trying to implement Autoencoders with RBM for dimensionality reduction from this link. However, instead of the RBM used in that link, I am trying to integrate GBRBM's as described in this link-...
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Padding issue in 1D convolutional autoencoder (Keras)

I am attempting a convolutional autoencoder on a few plots. However, I am running into issues with zero edges of the decoded signal (se figure) Ground truth graph (left) and decoded graph (right) I ...
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1answer
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How to fix Conv1D Autoencoder 'expect to have 3 dimensions …'

I want to use this code as an autoencoder: # ENCODER input_sig = Input(batch_shape=(None,1389,1)) x = Conv1D(64,3, activation='relu', padding='valid')(input_sig) x1 = MaxPooling1D(2)(x) x2 = Conv1D(...
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Keras add_loss will not work with y data(y_train, y_test) on Encoder-Decoder model

I found some weird activity by using add_loss function in Keras model compare to use loss='something like mse' in compile function while I was coding exercises for auto-encoder. The same model of ...