Usability of Skin Texture Biometrics for Mixed-Resolution Images

H. Alsufyani, Sanaul Hoque, F. Deravi
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Abstract

There is a growing demand for alternative biometric modalities that can handle various real world challenges such as recognizing partially occluded individuals. Skin texture has been proposed as a potential alternative; however, such skin texture analysis can become difficult when captured images are at varying resolutions (due to different distances or devices). This paper explores the prospect of using mixed-resolution facial skin images as a source of biometric information. The four facial skin regions investigated here are the forehead, right cheek, left cheek, and chin which were selected because at least one of these are expected to be captured in real-world scenarios. The proposed framework first localises and assesses the usability of the extracted region of interest (ROI) for subsequent analysis. Local Binary Pattern (LBP) descriptors are then used for feature matching because of their reported effectiveness in extracting skin texture information. Experiments conducted using the XM2VTS database suggest that mixed resolution skin texture images can provide adequate information for biometric applications.
混合分辨率图像皮肤纹理生物识别的可用性
对替代生物识别模式的需求日益增长,这些模式可以处理各种现实世界的挑战,例如识别部分遮挡的个体。皮肤纹理被认为是一种潜在的替代方案;然而,当捕获的图像以不同的分辨率(由于不同的距离或设备)时,这种皮肤纹理分析可能会变得困难。本文探讨了使用混合分辨率面部皮肤图像作为生物特征信息来源的前景。这里研究的四个面部皮肤区域是前额、右脸颊、左脸颊和下巴,之所以选择这些区域,是因为这些区域中至少有一个有望在现实场景中被捕获。该框架首先定位并评估提取的感兴趣区域(ROI)的可用性,以供后续分析。由于局部二值模式(LBP)描述符在提取皮肤纹理信息方面的有效性,因此将其用于特征匹配。使用XM2VTS数据库进行的实验表明,混合分辨率皮肤纹理图像可以为生物识别应用提供足够的信息。
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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