Questions tagged [deconvolution]

An algorithmic process to reverse the effects of a convolution, which is a linear form of signal or image filtering.

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Wiener filter for out-of-focus image in Python

I'm trying to use Wiener filtering to unblur an out-of-focus image. My application is purely academic, so I don't need a perfect result. However, I'm running into some odd problems and am unsure if ...
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1answer
64 views

Deblurring an image

I am trying to deblur an image in Python but have run into some problems. Here is what I've tried, but keep in mind that I am not an expert on this topic. According to my understanding, if you know ...
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9 views

The difference between tf.nn.conv2d_transpose and slim.conv2d_transpose

What is the difference between this two function in Tensorflow tf.nn.conv2d_transpose( value, filter, output_shape, strides, padding='SAME', data_format='NHWC', name=None )...
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1answer
16 views

What is the difference between UpSampling2D and Conv2DTranspose functions in keras?

Here in this code UpSampling2D and Conv2DTranspose seem to be used interchangeably. I want to know why this is happening. # u-net model with up-convolution or up-sampling and weighted binary-...
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13 views

Upsampling rectangular images in TensorFlow with tf.layers.conv2d_transpose

I want to upsample a latent vector data with shape (batch_size, 1, 1, 218) to a goal shape (batch_size, height, width, channels) while height=120, width=160, channels=7. I tried to do it the following ...
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43 views

Deconvolution problem to solve with Moffat PSF (Point Spread function) for atmospheric effects

I have to do an exercise about the large deconvolution problem in astrophysics. First, we use the Moffat PSF to model atmospheric effects. Here's its expression : I have generated a starting image ...
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30 views

How Tensorflow Handles 'SAME' padding in transpose convolutional?

I would like to know how 'SAME' padding is calculated when using a transpose convolutional layer in Tensorflow. I find the way it is calculated in this link in a convolutional layer with this formula ...
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12 views

Grainy output from deconvolutional network

I was trying to implement a convolutional autoencoder, which takes in a face as the input, extract features from it and returns an image using deconvolution from these features. The program was ...
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57 views

matlab deconvolve a square wave from a measured signal

I asked this question over on Signal Processing Stack Exchange, not sure if anyone here can help.. I have a signal measured from a radiation detector in a narrow beam of radiation. The peaks I get ...
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1answer
32 views

How to extract the common part between two audio signals and remove it from the signal?

If I have two audio signals Y1 and Y2 in Fourier domain that are the results of multiplication of S with H1 and H2 respectively (convolution in time domain): Y1=H1*S Y2=H2*S And I don't have S and ...
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12 views

Backprop in UpSampling Layer

I am trying to make a deconvolution layer, which is just [UpSampling + Conv layer] only using numpy. I've finished building Conv layer, but I don't know how the UpSampling layer works. I think there ...
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85 views

Haskell implementation of De-convolution (Richardson lucy)

I'm trying to implement an algorithm of de-convolution in Haskell and couldn't find a simpler one than Richardson Lucy. I looked up at the existing matlab/python implementation but am unable to ...
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75 views

How to use tf.get_variable with xavier initializer?

Based on this paper, I build a network to predict a flow field. First there are 8 conv layers, followed by 8 deconv layers. After training, I found that the predicted flow field converge to zeros. ...
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32 views

Deconvolution of 2 vectors (1 know + 1 unknown)

I am currently trying to deconvolute 2 vectors (a & b) from 1 (c). Actually, I have access to the recorded data of (a) & (c) but not (b). All are signal vs time with signal totally random. I ...
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90 views

Using Scipy's deconvolve function to deconvolve electrodermal activity data

I wish to deconvolve an EDA (electrodermal activity) signal using a Bateman function as the filter as described here, using Scipy's deconvolve function. However, when I attempt this, the ...
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73 views

image segmentation can't generate result

Building an Encoder-Decoder sequence for image segmentation,That’s to say,I use black background and white foreground to train the whole network.and in test process, it generate nothing but black]1 []...
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3answers
162 views

Tensorflow conv2d_transpose: Size of out_backprop doesn't match computed

When I build the FCN for segmentation, I want the images to keep the original size of input data, so I use the fully convolution layers. When I choose the fixed input size, such as (224, 224), the ...
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150 views

My Image segmentation result map contains black lattice in in the white patch

I'm doing an image segmentation with UNet-like CNN architecture by Pytorch 0.4.0.It mark foreground as 1 and background as 0 in the final segmentation result.I use a pre-trained VGG's feature ...
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59 views

how to calculate the weights for deconvolution layer based on the trained value weights of the corresponding convolution layer

Is this possible? The correspoding layer for deconvolution layer is tf.conv2d_transpose(), but the document states it is just a transpose conv layer, not a real deconv. So how can I calculate the ...
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1answer
60 views

Input 0 is incompatible with layer conv2d_transpose_1: expected ndim=4, found ndim=2

I am having trouble reshaping the layer before feeding it through deconvolution. I dont know how to reverse the flatten layer in convolution. Thanks for the help! def build_deep_autoencoder(...
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1answer
28 views

Some problems encountered when using deconvolution

the version of mxnet is 0.9, I use the Deconvolution operator base on resnet-50 for instance segmentation, but after dealing with several batch, the program breaks down, the error message is [17:36:...
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1answer
27 views

Deconvolution of sound using matlab

[y,fs]=wavread('C:\Users\Mohamed\Desktop\sinesweeprec.wav') [x,fs]=wavread('C:\Users\Mohamed\Desktop\sinesweep.wav') a=fft(x) b=fft(y) h=ifft(b/a) So I use this code in order to get the impulse ...
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1answer
36 views

coding a deconvolution using python

Before I begin I have to tell you that I have zero knowledge about DSP in python. I want to deconvolute two sound signals using python so that I can extract the room impulse response, the input signal ...
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229 views

ConvLSTM with tensorflow on Moving MNIST

I was trying to reproduce ConvLSTM on Moving MNIST data. However, thing became difficult because of decoder compare with normal RNN model. I tried first with tf.contrib.rnn.ConvLSTMCell. The document ...
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115 views

How to perform blind deblurring in CPP in opencv?

What steps should I follow to deblur an image? I looked into it and found I have to know some PSF's. The formulae for all these are very complex and are already inbuilt in MATLAB. But I want to do ...
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1answer
31 views

image processing technique is used to solve

I have a problem and a solution but i wonder whether my answer is true or not or where did i do wrong thanks for your help-->Question is that--> A professor of archeology doing research on currency ...
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72 views

expected conv2d_transpose_3 to have 4 dimensions, but got array with shape (64, 1)

I'm trying to make a CNN involving convolution followed by deconvolution to upscale an image. I took an image of dimensions 512*512. From that, I took patches of 64*64 and downscaled it to 16*16. Now ...
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0answers
102 views

tf.nn.conv2d_transpose gives InvalidArgumentError: Conv2DCustomBackpropInput: input and filter must have the same depth

I'm facing issues with getting tf.nn.conv2d_transpose to work correctly. Here is a small reproduction of what I'm trying to do: import tensorflow as tf import numpy as np # Shape (2, 3, 3, 1) == (...
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1answer
132 views

input channels does not match filter's input channels (Tensorflow)

I would like to use tf.nn.conv2d_transpose to build a deconvolution layer for a GAN network. I would like to create a function deconv_layer. It generates a new layer, which outputs filter_num filters ...
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1answer
15 views

Reconstructing a classified image from a simple Convolution Neural Network

I have a CNN trained on a classification task (Network is simple, 2 convolution + pooling layers and 2x fully connected layers). I would like to use this to reconstruct an image if I input a ...
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Solving a convolution equation for image processing

I'm tring to implement (in java) the method described in this article for reflectance separation in an image : https://www.researchgate.net/publication/229032794 I have issues at this part of the ...
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1answer
151 views

How does deconvolution and un-pooling lead to image segmentation?

I'm exploring and learning the domain of Computer Vision and am currently learning about CNNs. I fully understand the concept of CNNs i.e. uptill the Fully Connected layer. But, when I dived into the ...
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1answer
86 views

How to make a de-convolution layer in tensorflow?

I have written a code for deconvolution layer, def deconv2d(x, W,stride): x_shape = tf.shape(x) output_shape = tf.stack([x_shape[0], x_shape[1]*2, x_shape[2]*2, x_shape[3]//2]) decon = tf.nn....
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1answer
489 views

Visualization of the filters of VGG16

I am learning CNN, right now, working on deconvolution of the layers. I have begun the process of learning upsampling and observe how convolution layers see the world by generating feature maps from ...
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2answers
677 views

An example for dilation convolution-deconvolution (tensorflow)

I am trying to create an autoencoder based on dilated convolutions. I am confused about different suntax and also down/up sampling approches. How we can do it for just one layer which preserves the ...
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1answer
262 views

Fourier deconvolution with numpy

I am attempting to remove my probes function from a signal using Fourier deconvolution, but I can not get a correct output with test signals. t = np.zeros(30) t = np.append(t, np.arange(0, 20, 0.1)) ...
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1answer
105 views

How to use deconvolution with MNIST database

I am a newbie in CNN and I am trying the code the Deconvolution (to generate feature maps) in MNIST database (because it's the simplest one to learn for a beginner). I want my model to generate ...
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1answer
1k views

Getting incompatible shapes between op input and calculated input gradient when minimizing the AdamOptimizer

I am getting the following error while running my tensorflow code: Traceback (most recent call last): File "/usr/local/lib/python3.5/dist-packages/tensorflow/python/framework/tensor_shape.py", line ...
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0answers
81 views

Tensorflow error: Negative dimension size caused by subtracting

I am posting this question because similar question was posted for keras. I am getting this error in tensorflow. My data has 8 features column and 1 label column. I am using windows size of 90. Same ...
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47 views

Optimize removal of background/noise from an image

I have an image (I) that consists of actual signal (S) contaminated with background signal (B) of a known shape/texture but unknown intensity (a), i.e. I = S + aB. I can make a good but imperfect ...
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113 views

1D convolution and deconvolution using FFT

The task: there is some original signal, and there is some response function. I need to convolve them using FFT and then do deconvolution to restore original signal. The task graphical illustration ( ...
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1answer
144 views

How to use conv1d_transpose in TensorFlow for single-channel images?

New to TensorFlow. I have a single-channel image of size W x H. I would like to do a 1D deconvolution on this image with a kernel that only calculates the deconvoluted output row-wise, and 3 by 3 ...
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1answer
254 views

Upscaling in a CNN: Conv Transpose or Tile(Nearest neighbor)?

So far I've seen upscaling in a net using conv transpose (for example in the DCGAN paper). Now I'm reading a new article by Nvidia (growing GANs- see https://arxiv.org/abs/1710.10196) where they are ...
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1answer
1k views

What defines the output tensor shape of tf.layers.conv2d_transpose?

When using tf.layers.conv2d_transpose what defines the output tensor shape? For example: if the input was 4x4x512, for the output to be 8x8x256 the filters can be given, but how are is the height and ...
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1answer
166 views

Finding for convolution kernel if many 0's for FFT?

I know that original_image * filter = blur_image, where * is the convolution. Thus, filter = ifft(fft(blur)/fft(original)) I have an original image, the known filter, and the known blurred image. I ...
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1answer
257 views

C++ - Eigen FFT use for Deconvolution of 2 dimensional image

I am trying to perform deconvolution on an image, I which is n x m. The kernel used to do the convolution on it is K which is also n x m. Now I want to find the original image, O, by performing a ...
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2answers
142 views

Does a Convolutional Layer Have an Exact Inverse

...and if so under what circumstances? A Convolutional Layer usually yields an output of lesser size. Is it possible to reverse/invert such an operation by flipping/transposing the used kernel and ...
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2answers
681 views

How to visualize (and understand) transposed convolutions?

I have seen two ways of visualizing transposed convolutions from credible sources, and as far as I can see they conflict. My question boils down to, for each application of the kernel, do we go from ...
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0answers
169 views

What does the padding of tf.nn.conv2d_transpose do?

As we know, we can calculate the shape of output tensor by padding mode for conv2d, and the algorithm is clear, but I'm very confused about conv2d_transpose, does it pad the input tensor and then ...
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1answer
66 views

Fully convolutional neural netowrk for semantic segmentation

I have perhaps a naive question and sorry if this is not the appropriate channel to ask about these kind of questions. I have successfully implemented a FCNN for semantic segmentation, but I don't ...