Segmentación Visual Robusta utilizando el Plano RCrR y la Distancia de Mahalanobis

In this paper a robust algorithm against illumination changes for skin detection in images is proposed. A database with 50 controlled condition images and 50 without controlled conditions of people in frontal position showing face, hands and arms was used. Five algorithms to perform color correction...

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Autores principales: Arévalo Casallas, Diego Armando, Castañeda Obando, David Ricardo, Castañeda Fandiño, Jos´é Ignacio
Formato: Digital
Lenguaje:spa
Publicado: UNIVERSIDAD ANTONIO NARIÑO 2014
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Acceso en línea:https://revistas.uan.edu.co/index.php/ingeuan/article/view/389
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Sumario:In this paper a robust algorithm against illumination changes for skin detection in images is proposed. A database with 50 controlled condition images and 50 without controlled conditions of people in frontal position showing face, hands and arms was used. Five algorithms to perform color correction are evaluated: Simple Correction with Green Channel, Color Channel Compression, Color Channel Expansion, Fixed Reference and Gamma Correction. And four algorithms for segmentation are evaluated as well: RGB Skin Color, Reference Histogram, Euclidean Distance and Mahalanobis Distance. The proposed algorithm uses the Fixed Reference method together with Gamma Correction for color correction and performs the skin segmentation based on an RCrR color plane, found by making the transformation of the images using RGB and YCbCr spaces, finally Mahalanobis Distance is used. An average sensitivity value of 99.36 % and specificity of 84.31 % were obtained as result.
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