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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How to train a convolutional autoencoder in tensorflow 2.0?

I have created the following convolutional autoencoder in tensorflow2 (see below): import tensorflow as tf from tensorflow.keras.models import Model from tensorflow.keras import layers image_height=...
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Analysis of the latent dimensions of variational autoencoders: why using z_mean and not z?

I follow several tutorials on variational autoencoders (VAE) and there is one point that I don't understand: After having trained the model, we feed the encoder with test data to retrieve the ...
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How can I generate Counterfactual Examples for Anomaly detection using Autoencoders tasks? [closed]

I wanted to generate Counterfactual (CF) examples for an Autoencoder model used for Anomaly Detection Tasks. Hence, if someone can help me in how can I do that? Though a paper regarding that has ...
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Differing Performance on Horizontally Flipped Data

I'm currently training a convolutional autoencoder on a dataset consisting of images of a circular object. This object should possess mirror symmetries and rotational symmetries. In order to debug my ...
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Autoencoder and Inception Resnet V2 feature

I want to create an autoencoder starting from the vector of the features extracted with the Inception Resnet V2 model and following the diagram shown in the following image: This is the code I wrote ...
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How to get my LSTM-Autoencoder accuracy higher?

I am trying to train a LSTM-Autoencoder to reduce the dimensions of training data. The input has a shape of (56000, 45, 768) => 56000 Samples, 45 Dimensions, 768 Features. The inputs are actually ...
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3D autoencoder with cylinder meshes

I would like to encode a spatial physical field where the information (physical quantities such as temperature) is available at each node of a cylinder mesh structure. e.g, mesh structures here: https:...
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AutoEncoder Resulting In (61,61,3) instead of (64,64,3)

I am trying to build a convolutional autoencoder. Here is my architecture. def MainEncoder(): inp = Input(shape=(64,64,3)) x = Conv2D(256,2)(inp) x = MaxPool2D()(x) x = Conv2D(128,2)(...
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KeyError: 'input_1_ib-0' when i save my autoencoder model

I get the error when save my Autoencoder model. This is my code. I have searched about this error but no solution help me solve this problem. The error photo: .
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Generating random color in clothes dataset with texture intact

I am trying to generate random colors on a clothes using bicycle Gan and pixel gan but the colors are not much accurate .I have tried preprocessing images combining their edges and ground truth and ...
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Proper Loss Function For Convolutional Auto Encoder

So I have a Convolutional Auto Encoder Architecture that looks like this def MainEncoder(): inp = Input(shape=(64,64,3)) x = Conv2D(256,2)(inp) x = MaxPool2D()(x) x = Conv2D(128,2)(x) ...
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Custom Training Loop for Tensorflow Variational Autoencoder: `tape.gradient(loss, decoder_model.trainable_weights)` Always Returns List Full of None's

I am trying to write a custom training loop for a variational autoencoder (VAE) that consists of two separate tf.keras.Model objects. The objective of this VAE is multi-class classification. As usual, ...
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How to combine/concatenate image data and image attributes into autoencoder for image clustering?

I want to combine image data and image attributes(from csv file) into autoencoder for image clustering. The reason I use image attributes are to improve the result with image attributes but I don't ...
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R Error in py_get_attr_impl(x, name, silent) : AttributeError: module 'tensorflow' has no attribute 'placeholder'

I am trying to Implement Auto Encoder Dimension Reduction from Tensorflow in R, in this example: library(dimRed) library(tensorflow) fraud_data <- read.csv("fraud_data") data_label <- ...
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Pytorch size mismatch error in an autoencoder BiLSTM model

I am trying to develop an autoencoder based on BiLSTM. The problem that it gives is of size when i am trying to reshape in the second LSTM layer in the decoder. But it throws an error: RuntimeError: ...
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Why the loss function of my autoencoder model is not converging properly?

I am trying to train an autoencoder model. The dataset contains the biological sequences 9K sequences of size 131 (every sequence has trigrams words i.e. AGC GTA ACG) Autoencoder is lstm based: ...
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Stacked denoising autoencoder model always predicts one class

I am trying to implement a stacked denoising autoencoder in tensorflow for a project by adapting a previous implementation from here: https://github.com/faizmisman/SDAE-multi-omics. However the ...
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RuntimeError: mat1 and mat2 shapes cannot be multiplied

I'm trying to input a 5D tensor with shape ( 1, 8, 32, 32, 32 ) to a VAE I wrote: self.encoder = nn.Sequential( nn.Conv3d( 8, 16, 4, 2, 1 ), # 32 -> 16 nn.BatchNorm3d( 16 ), ...
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Odd input patch size is different the output size in autoencoder

Hi guys I am working with autoencoders to extract features from patches with size 31. The thing is that when I define the architecture the output gives me a patch of size 32. the code is: import keras ...
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Problem with dimensions in Pytorch Autoencoder

I am designing an autoencoder model. Here, the input blocks look alright. import os import torch import torchvision import numpy as np import torch.nn as nn import torch.optim as optim import ...
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I am trying to train an Autoencoder model in Pytorch

I am designing an autoencoder model. Here, the input blocks look alright. Input code with results 1/2 Input code with results 2/2 But when it come to my model, the architecture and the parameters seem ...
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Autoencoder produces weird artifact and loss is stuck

We are currently conducting a research ML experiment. Our goal is to find spectrograms that are similar to other spectrograms. In order to achieve this we are training a convolutional autoencoder to ...
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How to compile a CNN based autoencoder with multiple inputs?

I have images with their features(properties of the matter in the images). How can I run a CNN based autoencoder there the inputs are images with their features before k-means clustering? I mean ...
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What is the 'hole' in latent space of VAE for NLP?

It is said that differently from images, not all regions of the latent space are occupied by the posterior distribution. In simple words, text latent spaces tend to have “holes” where the decoding ...
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How to improve Borders between facies in unsupervised image semantic segmentation?

Hi guys I am using autoencoders to extract features from a 3D CT image. These features are not extracted from the latent space. In contrast, these features are extracted from a specific previous layer ...
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RuntimeError: mat1 and mat2 shapes cannot be multiplied (28x28 and 784x256)

I am implementing an Linear autoencoder where I feed images of size (28,28) but I am getting RuntimeError: mat1 and mat2 shapes cannot be multiplied (28x28 and 784x256) error import torch.nn as nn ...
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How to add a new feature (data) for image clustering to improve the result?

I have an autoencoder based on VGG16 and the shape of images are 224x224x3. Now I want to add a new features(data) for each image. These features I’ll read from csv for each images are thickness and ...
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Where should I put a new data in autoencoder based image clustering?

I have implemented an autoencoder based on image clustering. I have a new data (from csv file) for each image to improve k-means but I don’t know where I should read the new data. I use autoencoder(...
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What do the elements in get_weights() of a layer in autoencoder represented?

I am looking at an article about building a well-posed autoencoder. It mentions making the biases from train reconstruction error and test reconstruction error different. I understand that we can ...
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1answer
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How to retrain a variational autoencoder and reproduce the same results

I'm using Autoencoders to learn a representation with tensorflow. The experiments have different autoencoders (Autoencoder, Variational Autoencoder (VAE), Multimodal Autoencoder, and Multimodal VAE). ...
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Extracting hidden representations from an autoencoder using Pytorch

After having trained an AutoEncoder with PyTorch, how can I extract the low-dimensional embeddings of input features at some hidden-level?
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If the input to the autoencoder is normalized, do we need to use sigmoid on the last layer?

According to: Why is the decoder in an autoencoder uses a sigmoid on the last layer? The last layer activation function contains sigmoid in order to the output to be in range [0, 1]. If the input to ...
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Build and Train an autoencoder in Pytorch for dimensionality reduction of vector inputs

Can anyone help me trying to figure out how to build a dataset that Pytorch could understand? I have a dataset of chemical compositions where each vector contains all zeros but the fractional ...
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1answer
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How can I further improve this model(autoencoder)?

This is the first time I am implementing an autocoder for image clustering and I'm new to CNN. I try to understand how it works and learn by testing the model with images. This is my model and I just ...
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Is there any way to obtain features of any layer from autoencoder in Keras? [duplicate]

Hi Guys I am working with autoencoders, I am trying to get the features from a specific layer of autoencoder ( I am not interested in the latent space). I am using the following code: #Define ...
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autoencoder of arbitrary size

I want to build an autoencoder that works on a matrix A of an arbitrary size 246x246. I cannot resize the matrix such that it has dimensions of power of 2, as this is not an image, i.e. all positions ...
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1answer
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Tensorflow Autoencoder ValueError: No gradients provided for any variable

I'm trying to create a autoencoder using tensorflow that analyses a dataset of cars for a university project. However the code outputs a error when starting to train that I can't seem to find the ...
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1answer
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Why is Normalization causing my network to have exploding gradients in training?

I've built a network (In Pytorch) that performs well for image restoration purposes. I'm using an autoencoder with a Resnet50 encoder backbone, however, I am only using a batch size of 1. I'm ...
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LSTM autoencoder noisy reconstruction

I am trying to build an LSTM autoencoder for the compression of time series (currently only one dimensional, but could also be for multiple dimensions). A little bit of context first: I am developing ...
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Convolutional Autoencoder CIFAR10 PyTorch - RuntimeError

I am using PyTorch version: 1.9.0+cu102 with Convolutional Autoencoder for CIFAR-10 dataset as follows: # Define transformations for training and test sets- transform_train = transforms.Compose( [ ...
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why reconstruction loss function multiplied by constant in VAE?

I try to understand best way how to use autoencoders loss functions. So the often point is that common loss function consist of KL loss and reconstruction loss. And what really confuse me is that ...
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Converting a list of list to a tensor input for a CNN

I am trying to code an autoencoder with a CNN and I have to use my own data. The data comes as a list of lists and I have converted it (or attempted to convert it) to a pytorch tensor. tensor_x = ...
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How can I make multi-step forecasts using a Seq2Seq Encoder-Decoder Model with Attention

I am attempting to use a Seq2Seq model to make forecasts of factory production data using an Encoder-Decoder model augmented with Attention. I have become a little stuck as the output of the model ...
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42 views

KL loss function throws type error in keras tensorflow

I used some tutorials of vae to launch my code. The only problem I couldn't cope with loss function. If I simply use only KL div loss ( just got one by one from tutorial) : z_mean = Dense(self....
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What is the number of the layer which marks the end of BERT's encoder?

I was reading a research paper in which it uses the output from the encoder rather than the final output from a bert model(output from the attention autoencoder)
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How to add a new features to kmeans algorithm?

I’ve 2000 images and I implemented a k-means algorithm to detect anomalies first with an autoencoder and then kmeans for clustering. The sample on each image (with defects) has a different density and ...
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1answer
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Tensorflow - Get hidden layer output of an autoencoder

I have a stacked autoencoder that is structured like 500-250-100-50-100-250-500. I now want to take out the 50-dimensional hidden layer and use it to classify my input data in 2 classes using a ...
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18 views

Autoencoder with Multiple Outputs

How do I make an autoencoder with 2 different images at the output layer? I am asked to average 2 images as input to a neural network and receive both images separately as output.
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1answer
37 views

InvalidArgumentError training multivariate LSTM autoencoder

I tried to do experiments in different datasets using this model, it works fine for univariate time series. However, I get an issue when trying to do it for multivariate time series and I think it's ...
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how to save and feed the output of middle layers of DNN to another DNN as an input?

I need to feed about 4000 input image to alexnet and then for example get the output of conv4 layer(feature maps) and feed them to another DNN that works like autoencoder. I access to middle layer ...

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