Digital Image Processing Using Matlab - UMD
Gaussian probability distribution function: • • where σ is the standard deviation: a large value σ of produces to a flatter curve, and a small value σ leads to a “pointier” curve. • Blurring Effect
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Digital Image Processing Using Matlab - cs.umd.edu
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