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Comparative Assessment of Content-Based Face Image Retrieval in Different Color Spaces

机译:不同颜色空间中基于内容的面部图像检索的比较评估

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摘要

Content-based face image retrieval is concerned with computer retrieval of face images (of a given subject) based on the geometric or statistical features automatically derived from these images. It is well known that color spaces provide powerful information for image indexing and retrieval by means of color invariants, color histogram, color texture, etc.. This paper assesses comparatively the performance of content-based face image retrieval in different color spaces using a standard algorithm, the Principal Component Analysis (PCA), which has become a popular algorithm in the face recognition community. In particular, we comparatively assess 12 color spaces (RGB, HSV, YUV, YCbCr, XYZ, YIQ, L~*a~*b~*, U~*V~*W~*, L~*u~*v~*, I_1I_2I_3, HSI, and rgb) by evaluating 7 color configurations for every single color space. A color configuration is defined by an individual or a combination of color component images. Take the RGB color space as an example, possible color configurations are R, G, B, RG, RB, GB, and RGB. Experimental results using 1,800 FERET R, G, B images corresponding to 200 subjects show that some color configurations, such as R in the RGB color space and V in the HSV color space, help improve face retrieval performance.
机译:基于内容的面部图像检索涉及基于从这些图像自动得出的几何或统计特征的计算机检索(给定对象的)面部图像。众所周知,颜色空间通过颜色不变性,颜色直方图,颜色纹理等为图像索引和检索提供了有力的信息。本文使用标准比较评估了基于内容的面部图像在不同颜色空间中的检索性能。主成分分析(PCA)算法,该算法已在人脸识别社区中流行。特别是,我们比较评估了12个颜色空间(RGB,HSV,YUV,YCbCr,XYZ,YIQ,L〜* a〜* b〜*,U〜* V〜* W〜*,L〜* u〜* v〜 *,I_1I_2I_3,HSI和rgb),方法是为每个颜色空间评估7种颜色配置。颜色配置由颜色分量图像的单个或组合定义。以RGB颜色空间为例,可能的颜色配置为R,G,B,RG,RB,GB和RGB。使用与200个对象相对应的1,800张FERET R,G,B图像进行的实验结果表明,某些颜色配置(例如RGB颜色空间中的R和HSV颜色空间中的V)有助于改善人脸检索性能。

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