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An Optimal Scale for Edge Detection

Author(s)
Geiger, Davi; Poggio, Tomaso
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Abstract
Many problems in early vision are ill posed. Edge detection is a typical example. This paper applies regularization techniques to the problem of edge detection. We derive an optimal filter for edge detection with a size controlled by the regularization parameter $\\ lambda $ and compare it to the Gaussian filter. A formula relating the signal-to-noise ratio to the parameter $\\lambda $ is derived from regularization analysis for the case of small values of $\\lambda$. We also discuss the method of Generalized Cross Validation for obtaining the optimal filter scale. Finally, we use our framework to explain two perceptual phenomena: coarsely quantized images becoming recognizable by either blurring or adding noise.
Date issued
1988-09-01
URI
http://hdl.handle.net/1721.1/6499
Other identifiers
AIM-1078
Series/Report no.
AIM-1078

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  • AI Memos (1959 - 2004)

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