IEEE Trans Cybern. 2015 Sep;45(9):1823-37. doi: 10.1109/TCYB.2014.2360894. Epub 2014 Oct 9.
As an emerging biometric for people identification, the dorsal hand vein has received increasing attention in recent years due to the properties of being universal, unique, permanent, and contactless, and especially its simplicity of liveness detection and difficulty of forging. However, the dorsal hand vein is usually captured by near-infrared (NIR) sensors and the resulting image is of low contrast and shows a very sparse subcutaneous vascular network. Therefore, it does not offer sufficient distinctiveness in recognition particularly in the presence of large population. This paper proposes a novel approach to hand-dorsa vein recognition through matching local features of multiple sources. In contrast to current studies only concentrating on the hand vein network, we also make use of person dependent optical characteristics of the skin and subcutaneous tissue revealed by NIR hand-dorsa images and encode geometrical attributes of their landscapes, e.g., ridges, valleys, etc., through different quantities, such as cornerness and blobness, closely related to differential geometry. Specifically, the proposed method adopts an effective keypoint detection strategy to localize features on dorsal hand images, where the speciality of absorption and scattering of the entire dorsal hand is modeled as a combination of multiple (first-, second-, and third-) order gradients. These features comprehensively describe the discriminative clues of each dorsal hand. This method further robustly associates the corresponding keypoints between gallery and probe samples, and finally predicts the identity. Evaluated by extensive experiments, the proposed method achieves the best performance so far known on the North China University of Technology (NCUT) Part A dataset, showing its effectiveness. Additional results on NCUT Part B illustrate its generalization ability and robustness to low quality data.
作为一种新兴的生物识别技术,手背静脉在近年来受到了越来越多的关注,因为它具有普遍性、唯一性、永久性和非接触性等特点,特别是其活体检测简单、伪造难度大。然而,手背静脉通常是由近红外(NIR)传感器采集的,得到的图像对比度低,显示出非常稀疏的皮下血管网络。因此,在存在大量人群的情况下,它在识别方面并没有提供足够的独特性。本文提出了一种通过匹配多个源的局部特征来进行手背静脉识别的新方法。与当前仅关注手静脉网络的研究不同,我们还利用 NIR 手背图像揭示的皮肤和皮下组织的人依赖光学特性,并通过与微分几何密切相关的不同数量(如角点和斑点)对其地貌的几何属性进行编码,例如脊、谷等。具体来说,所提出的方法采用有效的关键点检测策略来定位手背图像上的特征,其中整个手背的吸收和散射特性被建模为多个(一阶、二阶和三阶)梯度的组合。这些特征全面描述了每个手背的鉴别线索。该方法进一步稳健地关联了图库和探针样本之间的对应关键点,并最终预测身份。通过广泛的实验评估,所提出的方法在华北理工大学(NCUT)A 部分数据集上取得了迄今为止最好的性能,证明了其有效性。在 NCUT B 部分的附加结果表明了其对低质量数据的泛化能力和鲁棒性。