基于非受控环境掌纹和手掌图像的性别和种族分类

Wojciech Michal Matkowski, A. Kong
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引用次数: 4

摘要

软生物特征属性,如性别、种族或年龄,可能为生物特征和法医应用提供有用的信息。研究人员使用面部、步态、虹膜和手等来对这些属性进行分类。尽管手的生物特征识别已经得到了广泛的研究,但对手的软生物特征识别的关注相对较少。以往基于手图像的软生物识别研究主要集中在性别和良好控制的成像环境上。本文考虑了非受控环境下的性别和种族分类。性别和种族标签被收集并提供给一个公开可用的数据库,其中包含来自互联网的手图像。在基于手掌(1)全手、2)手分割和3)掌纹图像的性别和种族分类场景下,对五种深度学习模型进行了微调和评估。实验结果表明,对于非受控环境下的性别和种族分类,完整和分割的手图像比掌纹图像更适合。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Gender and Ethnicity Classification based on Palmprint and Palmar Hand Images from Uncontrolled Environment
Soft biometric attributes such as gender, ethnicity or age may provide useful information for biometrics and forensics applications. Researchers used, e.g., face, gait, iris, and hand, etc. to classify such attributes. Even though hand has been widely studied for biometric recognition, relatively less attention has been given to soft biometrics from hand. Previous studies of soft biometrics based on hand images focused on gender and well-controlled imaging environment. In this paper, the gender and ethnicity classification in uncontrolled environment are considered. Gender and ethnicity labels are collected and provided for subjects in a publicly available database, which contains hand images from the Internet. Five deep learning models are fine-tuned and evaluated in gender and ethnicity classification scenarios based on palmar 1) full hand, 2) segmented hand and 3) palmprint images. The experimental results indicate that for gender and ethnicity classification in uncontrolled environment, full and segmented hand images are more suitable than palmprint images.
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