In this paper, we propose a novel hand-based person recognition method for the purpose of criminal investigations since the hand image is often the only available information in cases of serious crime such as sexual abuse. Our proposed method, Multi-Branch with Attention Network (MBA-Net), incorporates both channel and spatial attention modules in branches in addition to a global (without attention) branch to capture global structural information for discriminative feature learning. The attention modules focus on the relevant features of the hand image while suppressing the irrelevant backgrounds. In order to overcome the weakness of the attention mechanisms, equivariant to pixel shuffling, we integrate relative positional encodings into the spatial attention module to capture the spatial positions of pixels. Extensive evaluations on two large multi-ethnic and publicly available hand datasets demonstrate that our proposed method achieves state-of-the-art performance, surpassing the existing hand-based identification methods.
翻译:在本文中,我们为刑事调查的目的提出了一种新的基于手的人识别方法,因为手图像往往是性虐待等严重犯罪案件中唯一可获得的信息。我们提出的方法,即多注意网络(MBA-Net),除了一个全球(没有注意)分支外,还包含分支中的频道和空间关注模块,以获取全球结构信息,用于歧视特征学习。关注模块侧重于手图像的相关特征,同时压制不相关背景。为了克服关注机制的弱点,我们把相对位置编码与像素打乱,我们把相对位置编码纳入空间关注模块,以捕捉像素的空间位置。对两个大型多种族和公开可得的手数据集的广泛评价表明,我们拟议的方法达到了最新性能,超过了现有的手基识别方法。