Hand-Based Person Identification using Global and Part-Aware Deep Feature Representation Learning

Nathanael L. Baisa, Zheheng Jiang, Ritesh Vyas, Bryan Williams, Hossein Rahmani, P. Angelov, Sue Black
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引用次数: 6

Abstract

In cases of serious crime, including sexual abuse, often the only available information with demonstrated potential for identification is images of the hands. Since this evidence is captured in uncontrolled situations, it is difficult to analyse. As global approaches to feature comparison are limited in this case, it is important to extend to consider local information. In this work, we propose hand-based person identification by learning both global and local deep feature representations. Our proposed method, Global and Part-Aware Network (GPA-Net), creates global and local branches on the conv-layer for learning robust discriminative global and part-level features. For learning the local (part-level) features, we perform uniform partitioning on the conv-layer in both horizontal and vertical directions. We retrieve the parts by conducting a soft partition without explicitly partitioning the images or requiring external cues such as pose estimation. We make extensive evaluations on two large multi-ethnic and publicly available hand datasets, demonstrating that our proposed method significantly outperforms competing approaches.
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基于全局和局部感知深度特征表示学习的手部人物识别
在包括性虐待在内的严重犯罪案件中,证明有可能识别身份的唯一可用信息往往是手的图像。由于这些证据是在不受控制的情况下获得的,因此很难进行分析。由于在这种情况下进行特征比较的全局方法是有限的,因此扩展到考虑局部信息是很重要的。在这项工作中,我们通过学习全局和局部深度特征表示提出了基于手的人识别。我们提出的方法,全局和部分感知网络(GPA-Net),在卷积层上创建全局和局部分支,用于学习鲁棒判别全局和部分级特征。为了学习局部(部分级)特征,我们在水平和垂直方向上对卷积层进行统一划分。我们通过进行软分区来检索这些部分,而不需要明确地对图像进行分区或需要外部线索(如姿态估计)。我们对两个大型多种族和公开可用的手数据集进行了广泛的评估,证明我们提出的方法显着优于竞争方法。
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