Using eigencolor normalization for illumination-invariant color object recognition

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摘要

Color is one of salient features for color object recognition, however, the colors of object images sensitively depend on scene illumination. To overcome the lighting dependency problem, a color constancy or color normalization method has to be used. This paper presents a color image normalization method, called eigencolor normalization, which consists of two phases as follows. First, the compacting method, which was originally used for compensating the adverse effect due to shape distortion for 2-D planar objects, is exploited for 3-D color space to make the color distribution less correlated and more compact. Second, the compact color image is further normalized by rotating the histogram to align with the reference axis computed. Consequently, the object colors are transformed into a new color space, called eigencolor space, which reflects the inherent colors of the object and is more invariant to illumination changes. Experimental results show that our eigencolor normalization method is superior to other existing color constancy or color normalization schemes on achieving more accurate color object recognition.

论文关键词:Color normalization,Illumination invariant,Color constancy,Indexing and retrieval,Color object recognition,Compact color,Eigencolor space

论文评审过程:Received 26 October 2000, Accepted 5 October 2001, Available online 5 December 2001.

论文官网地址:https://doi.org/10.1016/S0031-3203(01)00207-2