Polarization Imaging for Face Spoofing Detection: Identification of Black Ethnical Group

Azim Zaliha Abd Aziz, Hong Wei
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引用次数: 6

Abstract

Recently, several studies have shown the ability of polarized light as one of the face spoofing countermeasures. In this paper, polarized light is used to identify genuine human user from black ethnical skin color. Printed photos are used as spoofing attacks. Then, the Stokes parameters are applied to generate ISDOLPimage for each genuine face and printed photo. Visually, the ISDOLPof genuine black users seem brighter than the other skin colors. The mean intensity has erroneously classified all the ISDOLPimages of black skins as photo faces. Coarsely comparing ISDOLP histograms of black skin and printed photos shows that data distributions between the black skin and printed photo are relatively similar. The bimodality coefficient (BC) algorithm is then applied to study the distributions modality. Surprisingly, the BC has been able to identify these genuine black skin group well, but fails to other ethnical groups. A newly proposed fusion formula which is named as the Mean_BC (MBC) has achieved higher detection accuracy rate and can be a robust face spoofing detection measure for polarized database consists of various ethnical groups.
偏振成像在人脸欺骗检测中的应用:黑人族群的识别
近年来,一些研究表明,偏振光作为人脸欺骗的一种对抗手段。本文利用偏振光从黑人种族肤色中识别真正的人类用户。打印的照片被用作欺骗攻击。然后,应用Stokes参数对每张真实人脸和打印照片生成ISDOLPimage。从视觉上看,真正的黑色用户似乎比其他肤色的人更亮。平均强度错误地将所有黑色皮肤的isdolpimage分类为照片人脸。粗略比较黑色皮肤和打印照片的ISDOLP直方图,黑色皮肤和打印照片之间的数据分布比较相似。然后应用双峰系数(BC)算法研究分布模态。令人惊讶的是,英国广播公司能够很好地识别这些真正的黑皮肤群体,但却无法识别其他种族。提出了一种新的融合公式Mean_BC (MBC),实现了较高的检测准确率,可作为多民族极化数据库的鲁棒人脸欺骗检测手段。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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