I don't understand how someone could come up with a simple 3x3 matrix called kernel, so when applied to the image, it would produce some awesome effect. Examples: ...
I have the following code which is used to deconvolve a signal. It works very well, within my error limit...as long as I divide my final result by a very large factor (11000). width = 83.66; x = ...
I am trying to get a square wave of width 83.66. Seeing as I am using for a deconvolution, I want it to be exact. Here is what I have so far: width = 83.66; x = linspace(-400,400,10000); a2 ...
Hello I am working in digital image restoration field, I have read all things about convolution, that for an LTI system if we know its impulse response then we can find its output by just using ...
the function (f) I want to reconstruct partially could look like this: The following properties are known: It consists only of alternating plateau (high/low). So the first derivation is zero ...
In the FFT2D paper http://developer.download.nvidia.com/compute/cuda/2_2/sdk/website/projects/convolutionFFT2D/doc/convolutionFFT2D.pdf in the figure 1 and 2 it's stated that: assuming the image ...
What makes a convolution kernel separable? How would I be able to tell what those separable parts were in order to do two 1D convolutions instead of a 2D convolution> Thanks
I'm looking at the CUDA SDK convolution with separable kernels, and I have a simple question but can't find an answer: Do the vectors, whose convolution gives the kernel, need to have the same size? ...
I'd like to improve the performance of convolution using python, and was hoping for some insight on how to best go about improving performance. I am currently using scipy to perform the convolution, ...