Why is Gaussian smoothing commonly used with edge detection?
What is the most suitable smoothing method for an edge detection algorithm? Is it Gaussian smoothing? If so, why?
closed as not a real question by Ben, ArtemStorozhuk, talonmies, okm, Ondrej Tucny Oct 28 '12 at 12:41
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A simple google with your own question header would've answered your question.
Basically to avoid noise affecting detection.
"Because these kernels are approximating a second derivative measurement on the image, they are very sensitive to noise. To counter this, the image is often Gaussian smoothed before applying the Laplacian filter."