Marr-Hildreth algorithm

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In computer vision, the Marr-Hildreth algorithm is a method of detecting edges in digital images, that is continuous curves where there are strong and rapid variations in image brightness. The Marr-Hildreth edge detection method is simple and operates by convolving the image with the Laplacian of the Gaussian function, or, as a fast approximation by Difference of Gaussians. Then, zero-crossings are detected in the filtered result to obtain the edges. The Lapacian of the Gaussian image operator is sometimes also referred to as the Mexican hat wavelet due to its visual shape when turned up-side-down. David Marr was one of the inventors.

The Marr-Hildreth operator, however, suffers from two main limitations. It generate responses that do not correspond to edges, so-called "false edges", and the localization error may be severe at curved edges. Today, there are much better edge detection methods, such as the Canny operator based on the search for local directional maxima in the gradient magnitude, or the differential approach based on the search for zero-crossings of the differential expression that corresponds to the second-order derivative in the gradient directions (Both of these operations preceded by a Gaussian smoothing step.) For more details, please see the article on edge detection.