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Micro-Expression Recognition Using Color Spaces
Dec 18, 2015Author:
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Title: Micro-Expression Recognition Using Color Spaces

Authors: Wang, SJ; Yan, WJ; Li, XB; Zhao, GY; Zhou, CG; Fu, XL; Yang, MH; Tao, JH

Author Full Names: Wang, Su-Jing; Yan, Wen-Jing; Li, Xiaobai; Zhao, Guoying; Zhou, Chun-Guang; Fu, Xiaolan; Yang, Minghao; Tao, Jianhua

Source: IEEE TRANSACTIONS ON IMAGE PROCESSING, 24 (12):6034-6047; 10.1109/TIP.2015.2496314 DEC 2015

ISSN: 1057-7149

eISSN: 1941-0042

Unique ID: WOS:000364992700004

 

Abstract:

Micro-expressions are brief involuntary facial expressions that reveal genuine emotions and, thus, help detect lies. Because of their many promising applications, they have attracted the attention of researchers from various fields. Recent research reveals that two perceptual color spaces (CIELab and CIELuv) provide useful information for expression recognition. This paper is an extended version of our International Conference on Pattern Recognition paper, in which we propose a novel color space model, tensor independent color space (TICS), to help recognize micro-expressions. In this paper, we further show that CIELab and CIELuv are also helpful in recognizing micro-expressions, and we indicate why these three color spaces achieve better performance. A micro-expression color video clip is treated as a fourth-order tensor, i.e., a four-dimension array. The first two dimensions are the spatial information, the third is the temporal information, and the fourth is the color information. We transform the fourth dimension from RGB into TICS, in which the color components are as independent as possible. The combination of dynamic texture and independent color components achieves a higher accuracy than does that of RGB. In addition, we define a set of regions of interests (ROIs) based on the facial action coding system and calculated the dynamic texture histograms for each ROI. Experiments are conducted on two micro-expression databases, CASME and CASME 2, and the results show that the performances for TICS, CIELab, and CIELuv are better than those for RGB or gray.

 

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