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In pattern recognition and in image processing, Feature extraction is a special form of dimensionality reduction.

General


In many problems the number of variables is very large. This can mean that processing of the data is slow, requires a lot of memory or that classification algorithm overfits to the training examples, thus generalizing poorly to new samples. Feature extraction is a general term for methods for constructing combinations of the variables which get around above problems but still describe the data sufficiently accurately.

Best results are archived when an expert constructs a set of application-dependent features. Nevertheless, if no such expert knowledge is available general dimensionality reduction techniques may help. These include:

Image processing


It can be used in the area of image processing which involves using algorithms to detect and isolate various desired portions or shapes (features) of a digitized image or video stream. It is particularly important in the area of Optical Character Recognition.

Low-level

Curvature

Image motion

Shape Based

Thresholding

Template matching

Hough transform
  • Lines
  • Circles/Ellipse
  • Arbitrary shapes (Generalized Hough Transform)

Flexible methods

  • Deformable, parameterized shapes
  • Active contours (snakes)

References


See also


Computer vision stubs

Machine learning

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This article is licensed under the GNU Free Documentation License. It uses material from the "Feature extraction".

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