Descripción
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This work presents a novel background-foreground classification technique based on adaptive non-parametric kernel estimation in a color-gradient space of components. By combining normalized color components with their gradients, shadows are efficiently suppressed from the results, while the luminance information in the moving objects is preserved. Moreover, a fast multi-region iterative tracking strategy applied over previously detected foreground regions allows to construct a robust foreground modeling, which combined with the background model increases noticeably the quality in the detections. The proposed strategy has been applied to different kind of sequences, obtaining satisfactory results in complex situations such as those given by dynamic backgrounds, illumination changes, shadows and multiple moving objects. | |
Internacional
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Si |
Nombre congreso
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IEEE Internaional Conference on Image Processing (ICIP) |
Tipo de participación
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960 |
Lugar del congreso
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Hong Kong (China) |
Revisores
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Si |
ISBN o ISSN
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978-1-4244-7992-4 |
DOI
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10.1109/ICIP.2010.5653489 |
Fecha inicio congreso
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26/09/2010 |
Fecha fin congreso
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29/09/2010 |
Desde la página
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845 |
Hasta la página
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848 |
Título de las actas
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Proceedings of the Internaional Conference on Image Processing |