Paper
17 May 2016 Skin subspace color modeling for daytime and nighttime group activity recognition in confined operational spaces
Amir Shirkhodaie, Azin Poshtyar, Alex Chan, Shuowen Hu
Author Affiliations +
Abstract
In many military and homeland security persistent surveillance applications, accurate detection of different skin colors in varying observability and illumination conditions is a valuable capability for video analytics. One of those applications is In-Vehicle Group Activity (IVGA) recognition, in which significant changes in observability and illumination may occur during the course of a specific human group activity of interest. Most of the existing skin color detection algorithms, however, are unable to perform satisfactorily in confined operational spaces with partial observability and occultation, as well as under diverse and changing levels of illumination intensity, reflection, and diffraction. In this paper, we investigate the salient features of ten popular color spaces for skin subspace color modeling. More specifically, we examine the advantages and disadvantages of each of these color spaces, as well as the stability and suitability of their features in differentiating skin colors under various illumination conditions. The salient features of different color subspaces are methodically discussed and graphically presented. Furthermore, we present robust and adaptive algorithms for skin color detection based on this analysis. Through examples, we demonstrate the efficiency and effectiveness of these new color skin detection algorithms and discuss their applicability for skin detection in IVGA recognition applications.
© (2016) COPYRIGHT Society of Photo-Optical Instrumentation Engineers (SPIE). Downloading of the abstract is permitted for personal use only.
Amir Shirkhodaie, Azin Poshtyar, Alex Chan, and Shuowen Hu "Skin subspace color modeling for daytime and nighttime group activity recognition in confined operational spaces", Proc. SPIE 9842, Signal Processing, Sensor/Information Fusion, and Target Recognition XXV, 984213 (17 May 2016); https://doi.org/10.1117/12.2226026
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Cited by 3 scholarly publications.
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KEYWORDS
Skin

RGB color model

Data modeling

Light sources and illumination

Statistical modeling

Visual process modeling

Space operations

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