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1 May 2006Adaptive synthetic discriminant function filters for pattern recognition
New adaptive correlation filters based on a conventional synthetic discriminant function (SDF) for reliable recognition of an object in cluttered background are proposed. The information about an object to be recognized, false objects, and a background to be rejected is utilized in an iterative training procedure to design a correlation filter with a given value of discrimination capability. Computer simulation results obtained with the proposed adaptive filter in test scenes are discussed and compared with those of various correlation filters in terms of discrimination capability, tolerance to input additive noise that is always present in image sensors, and to small geometric image distortions.
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Angel J. González-Fraga, Vitaly I. Kober, Josué Álvarez-Borrego, "Adaptive synthetic discriminant function filters for pattern recognition," Opt. Eng. 45(5) 057005 (1 May 2006) https://doi.org/10.1117/1.2205232