With the recent success of computer vision and deep learning, remarkable progress has been achieved on automatic personal recognition using vein biometrics. However, collecting large-scale real-world training data for palm vein recognition has turned out to be challenging, mainly due to the noise and irregular variations included at the time of acquisition. Meanwhile, existing palm vein recognition datasets are usually collected under near-infrared light, lacking detailed annotations on attributes (e.g., pose), so the influences of different attributes on vein recognition have been poorly investigated. Therefore, this paper examines the suitability of synthetic vein images generated to compensate for the urgent lack of publicly available large-scale datasets. Firstly, we present an overview of recent research progress on palm vein recognition, from the basic background knowledge to vein anatomical structure, data acquisition, public database, and quality assessment procedures. Then, we focus on the state-of-the-art methods that have allowed the generation of vascular structures for biometric purposes and the modeling of biological networks with their respective application domains. In addition, we review the existing research on the generation of style transfer and biological nature-based synthetic palm vein image algorithms. Afterward, we formalize a general flowchart for the creation of a synthetic database comparing real palm vein images and generated synthetic samples to obtain some understanding into the development of the realistic vein imaging system. Ultimately, we conclude by discussing the challenges, insights, and future perspectives in generating synthetic palm vein images for further works.
翻译:由于计算机视野和深层学习最近取得了成功,在利用静脉生物鉴别技术实现个人自我自动识别方面取得了显著进展,然而,收集大规模真实世界培训数据以利棕榈血管识别的大规模现实世界培训数据却证明具有挑战性,主要原因是购置时出现噪音和不规则的变化;同时,现有的棕榈血管识别数据集通常在近红外光下收集,缺乏关于属性的详细说明(例如成形),因此不同属性对血管识别的影响调查不力;因此,本文件审查了合成血管图像的适宜性,以弥补迫切需要公开提供的大型数据集的缺乏。首先,我们概述了棕榈血管识别方面的近期研究进展,从基本背景知识到固定解剖结构、数据采集、公共数据库和质量评估程序。然后,我们侧重于能够生成生物测定目的的血管结构,以及用各自应用领域的生物网络建模。此外,我们审查了关于生成风格转移和基于生物特性的合成棕榈图像的当前研究,然后将我们通过对最终的棕榈成型图像数据库进行流程化,然后再将我们为最终的血管图像的流程分析结果。