IEEE Trans Pattern Anal Mach Intell. 2016 Jun;38(6):1272-9. doi: 10.1109/TPAMI.2015.2509968.
Design and development of efficient and accurate feature descriptors is critical for the success of many computer vision applications. This paper proposes a new feature descriptor, referred to as DoN, for the 2D palmprint matching. The descriptor is extracted for each point on the palmprint. It is based on the ordinal measure which partially describes the difference of the neighboring points' normal vectors. DoN has at least two advantages: 1) it describes the 3D information, which is expected to be highly stable under commonly occurring illumination variations during contactless imaging; 2) the size of DoN for each point is only one bit, which is computationally simple to extract, easy to match, and efficient to storage. We show that such 3D information can be extracted from a single 2D palmprint image. The analysis for the effectiveness of ordinal measure for palmprint matching is also provided. Four publicly available 2D palmprint databases are used to evaluate the effectiveness of DoN, both for identification and the verification. Our method on all these databases achieves the state-of-the-art performance.
设计和开发高效准确的特征描述符对于许多计算机视觉应用的成功至关重要。本文提出了一种新的特征描述符,称为 DoN,用于 2D 掌纹匹配。该描述符是为掌纹上的每个点提取的。它基于顺序度量,部分描述了相邻点法向量的差异。DoN 至少有两个优点:1)它描述了 3D 信息,预计在非接触式成像过程中常见的光照变化下具有高度稳定性;2)每个点的 DoN 的大小仅为一位,提取计算简单,匹配容易,存储高效。我们表明可以从单个 2D 掌纹图像中提取这种 3D 信息。还提供了用于掌纹匹配的顺序度量的有效性分析。使用四个公开的 2D 掌纹数据库来评估 DoN 的有效性,包括识别和验证。我们的方法在所有这些数据库上都达到了最先进的性能。