1 April 2008 Adaptive composite filters for pattern recognition in linearly degraded and noisy scenes
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Abstract
New adaptive correlation filters for reliable recognition of geometrically distorted objects in blurred and noisy scenes are proposed. The filters are based on modified synthetic discriminant functions. The information about objects to be recognized, false objects, disjoint background, additive noise, and expected degradations of targets and input scenes are utilized in an iterative training algorithm. The algorithm is used to design a correlation filter with a specified discrimination capability. Computer simulation results obtained with the proposed adaptive filters in test scenes are discussed and compared with those of various correlation filters in terms of discrimination capability and location errors.
©(2008) Society of Photo-Optical Instrumentation Engineers (SPIE)
Erika M. Ramos Michel and Vitaly I. Kober "Adaptive composite filters for pattern recognition in linearly degraded and noisy scenes," Optical Engineering 47(4), 047204 (1 April 2008). https://doi.org/10.1117/1.2911020
Published: 1 April 2008
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CITATIONS
Cited by 19 scholarly publications.
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KEYWORDS
Image filtering

Digital filtering

Target recognition

Linear filtering

Optical filters

Composites

Detection and tracking algorithms

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