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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Functional API vs Subclassing object oriented Variational Autoencoder

Firstly, I've written a variational autoencoder via Functional API using tensorflow v2.3 following this tf example: input_dim = X_train.shape[1:] layer_dim = 128 # Build encoder inputs = Input(shape =...
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Back propagation from decoder input to encoder output in variational autoencoder

I am trying to understand VAE in-depth by implementing it by myself and having difficulties when back-propagate error of the decoder input layer to the encoder output layer. My encoder network ...
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Autoencoder: how to check if the decoder is reconstructing the input correctly

I am training an autoencoder network on an ndarray of processed data (sensor signal data having fixed-length segments of shape (1,100,4)). Is there a way to verify that the decoder part of my network ...
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How to save model properly to continue the training of VAE in keras

I have built the VAE in keras using functional API. The VAE has 3 models: encoder def _create_encoder(self): # create convolutional layers for encoder X = self.images for i ...
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Why is Keras convolutional autoencoder requiring 70 GB memory?

I am training a deep neural network with the Keras framework to convert a 1024 x 1024 image to a 256 x 512 x 512 image, and I'm running into some issues. Particularly, training the deep neural network ...
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Increase layer size while keep the older weights frozen

I am now trying to implement the following procedure: at first, I have a trained autoencoder, and then I am thinking of increase the size of the bottleneck layer(increase number of "neurons" ...
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Architecture of UNet [closed]

Looking at the structure of UNet neural network, it's clearly visible that the network first runs multiple 2Dconvolution layers and then a set of 2DConvolutionTranspose layers. The point is these ...
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There is no improvement in autoencoder output

I am training an autoencoder using gradient tape for neural style transfer. I don't find any difference in loss even after thousands of epochs. I tried with different batch sizes and learning rates. ...
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Not able to train autoencoder network [closed]

I am training an autoencoder using gradient tape for neural style transfer. I don't find any difference in loss even after thousands of epochs. I tried with different batch sizes and learning rates. ...
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How should I apply a variational autoencoder in a low-dimensional real value case?

I am trying to applying VAE in a simple toy example to familiarize with its property. However, I get stuck in training the model. The total loss and the reconstruction error does not seem to decrease. ...
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Why the variational autoencoder does not work for non binary dataset?

I am trying to implement a variational autoencoder on a dataset with shape (11858,14, 12,1). I am going the same as tensor flow's tutorial for Convolutional Variational Autoencoder for my dataset. ...
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Implementing model (autoencoder + CNN) how to ensure my model is not overfitting?

I am using the Kfold method. I have a dataset of size 1035. I want to ensure that my model is not overfitting since I am getting the test accuracy of 100% and if I increase the epoch it reaches 100% ...
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How can i extract the encoded part of multi-modal autoencoder and convert the .h5 model to a numpy array?

I am making a deep multimodal autoencoder model which takes two inputs and produces a two outputs (which are the reconstructed inputs). The two inputs are with shape of (1000, 50) and (1000,60) ...
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Why do I get unstable values in an encoded dataframe for each time I run an autoencoder?

I'm trying to find an optimal number of clusters on my data with elbow method and silhouette score while using KMeans. Although, I'm testing these methods using dimensionality reduction. If I try PCA ...
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Autoencoder for detection of anomal time series

I am aware that I can use an Autoencoder to detect outliers/anomalies in a time series (as single points in this series). In my case I have a set of short sequences of a times series (consisting of a ...
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what is the best approach to have a anomaly detection app (for images with small cracks ) with unsupervised learning [closed]

I have some images with anomalies like small cracks ( but its an imbalanced dataset) Please suggest some effective scalable approches . Should i consider Cov Autoencoders? its suppoesed to be in ...
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Output image of CNN autoencoder is white

I'm having trouble training an autoencoding CNN. My objective is to cluster document images (receipts, letters, etc.) in an unsupervised fashion (btw do you have other algorithms besides autoencoders ...
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How to load a large image dataset efficiently?

I am trying to work on an image colorizer using autoencoders. The 'input' is a grayscale image and the 'labels' are their corresponding color images. I am trying to get it to work on google colab on a ...
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Why does my h2o auto-encoder have so many input nodes?

I am trying to train an auto-encoder model in R with h2o to detect anomalies in my dataset: Here is my code: df <- read.csv(file=inputFile) # extract dataframe feature_names <- names(df) ...
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How can I perform anomaly detection and localization simultaneously?

[Image with anomaly] This is the image with anomaly. The highlighted part of the image is regarded as anomaly. I need to get the channel range in which we observe anomalous behavior.
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Denoising Autoencoder returns a mostly black image

I have some faces cropped out of images, and I want to run them through a denoising autoencoder, the code which I got from here. When I run the code on the MNIST dataset, the results look fine, like ...
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Autoencoder with Keras: How to get better results?

I have a collection of 1000 images which are very similar but not identical. Here are three examples: Example 1 Example 2 Example 3 Now my goal is to create a good working autoencoder for these images....
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How to choose matching layer sizes in a convolutional autoencoder?

Are there any suggested best practices when choosing layer sizes when building a convolutional autoencoder? For example, if I'm working with a 28x28x1 MNIST image, and creating my model with tf.keras ...
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Anomaly Detection Using Autoencoder and Binary CrossEntropy

I am trying to detect anomalies using autoencoder and binary cross entropy. I have reconstructed the images using convolutional autoencoder. I need to detect anomalies by comparing the binary cross ...
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Building Autoencoder with Softmax classifier - Input mismatch error

I am trying to train an auto-encoder with a softmax classifier to replicate the results in this paper Intriguing properties of neural networks. My implementation is the following: n_embedded = 400 ...
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resizing image in python and converting to np.array increases the channel dim

I have a batch of 256x256x3 images. Batch Sized = 256. x_train_n.append(image) x_train_n2 = np.array(x_train_n) When I check shape of the image, it is = 256x256x3. However shape of x_train_n2 = ...
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Suggestion for the hybrid model

I am currently using a hybrid model using PyTorch by hybrid I mean Autoencoder and CNN and here is my model : convnet( (fc_encoder): Sequential( (0): Linear(in_features=9950, out_features=200, bias=...
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Array shape in an autoencoder network

I am trying to fit an autoencoder network to my dataset containing a multi-dimensional array, but having issues with the shape of a layer within the decoder part of my autoencoder. The input data to ...
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Neural network for text documents invariant to sentence order

Is there a neural network architecture that I can use to find a low dimensional mapping for documents comprised of multiple sentences such that the mapping is invariant to sentence order? So, if Doc 1 ...
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1answer
35 views

Model.evaluate in keras with multi inputs and multi outputs

I m working on a deep multimodal autoencoder in the case of unsupervised learning which takes two inputs with shape of (1000, 50) and (1000,60) respectively to reconstruct the intial two inputs. The ...
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26 views

Keras model with multiple inputs and multiple outputs for unsupervised learning

I am making a deep multimodal autoencoder model which takes two inputs and produces a two outputs (which are the reconstructed inputs). The two inputs are with shape of (1000, 50) and (1000,60) ...
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23 views

Using skimage.transform.rescale twice on an image creates additional channels

In a coursera guided project that I was doing, the instructor used from skimage.transform import rescale image_rescaled = rescale(rescale(image,0.5),2.0) to distort the image. The error that is ...
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How to pass one data array per model input in multimodal deep autoencoder?

i'm working on a deep multimodal autoencoder for dimensionality reduction and i'm following this code (https://wizardforcel.gitbooks.io/deep-learning-keras-tensorflow/8.2%20Multi-Modal%20Networks.html)...
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Training Variational Auto Encoder in Keras raises “InvalidArgumentError: Incompatible shapes” error

I have been attempting to get this VAE working all evening, but keep running into the same issue over and over. I am not sure what the problem is. I have tried removing callbacks, validation, changing ...
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Autoencoder for sequence segmentation (unsupervised learning)

I'm struggling into build an Autoencoder for clustering/segmentation. I have 6 variables as inputs, to determinate the class of the target. I want to have 5 clusters: my idea was about to create two ...
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How to calculate the dimensionality reduction/ bottleneck of an convolutional Autoencoder?

So I have this Autoencoder setup from this Github repo Where the Encoder and Decoder look like below: I tried to find how to calculate the dimension reduction and read different kind of papers, but ...
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Keras autoencoder ladder network layer weight sharing

I am trying to build a ladder network autoencoder in keras. The main idea is that the encoding layers have noisy and clean versions and the decoding layers are passed the features from the ...
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52 views

Creating MLP model to predict the ratings that a user will give to an unseen movie using PyTorch

For my project , i’m trying to predict the ratings that a user will give to an unseen movie, based on the ratings he gave to other movies. I’m using the movielens dataset.The Main folder, which is ml-...
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I am getting “cannot import name 'tensorflow_backend' from 'keras.backend'” when training a variational autoencoder

I cloned https://github.com/brunnergino/MIDI-VAE and am attempting to run it on my own MIDI data, but am running into this: 2020-07-08 11:58:35.839768: I tensorflow/stream_executor/platform/default/...
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ValueError: Error when checking input: expected input_1 to have shape (29606403,) but got array with shape (43,)

I want to train a deep network starting with the following layer: df = df.iloc[:,0:43] df = np.array(df) df = df.astype(np.float64) df[df>=10000000000] = 0 df = m.fit_transform(df) x_train , ...
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Is the Keras example for Autoencoders supposed to work?

I tried to implement the autoencoder from the keras website: https://blog.keras.io/building-autoencoders-in-keras.html I used the exact code from the page to get sort of a baseline for what the ...
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ValueError: Dimensions must be equal (keras)

I'm trying to train an autoencoder but have problems in reshaping my X_train to fit it to my model model(). from tensorflow import keras from keras.layers import * from keras.models import Model from ...
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Reconstructed data from RBM is shrunk

I'm currently training a Gaussian-Bernoulli RBM and a variational autoencoder to model a distribution of data. However, I'm running into an issue where the generated data has about half of the ...
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Autoencoder for Numerical Dataset

i was coding a Autoencoder. The plan is to try to use it for Data Augmentation of a numerical Dataset. I know it might not work properly, but i want to try at least. So i found an example of a code ...
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Built custom loss function of AutoEncoder to assimilate similar and successive states

I have a dataset that contain many scenarios. each scenario spread over a period of 15 days, each day is a state. I want to pass it through an AutoEncoder to assimilate similar states and successive ...
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Image Segmentation Tensorflow tutorials

In this tf tutorial, the U-net model has been divided into 2 parts, first contraction where they have used Mobilenet and it is not trainable. In second part, I'm not able to understand what all layers ...
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How to make, and save, predictions for all the images in a folder (Image reconstruction/ Autoencoder/ model.predict)

I've been following a template for image reconstruction using an autoencoder https://github.com/bnsreenu/python_for_microscopists/blob/master/089b-...
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Input and output layers of Keras autoencoder don't match, can't run model

I am trying to work on building an autoencoder in Keras, with an input shape of (470,470,3) but the output never seems to match, even when I try to switch around padding. This is my code, can you ...
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69 views

Using Autoencoder for Data Augmentation of numerical Dataset in Python

i have CSV-File with three labels. Now i am looking for a way to increase the amount of Data. So i thought i could just take one class seperatly and use a Autoencoder to increase the data of that ...
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Can vanilla autoencoder do multivariable regression?

Can vanilla autoencoder do multivariable regression and encode input directly into variables we want to predict? In this case, if we have labels for input, how to get labels involved?

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