Finger vein recognition has drawn increasing attention as one of the most popular and promising biometrics due to its high distinguishes ability, security and non-invasive procedure. The main idea of traditional schemes is to directly extract features from finger vein images or patterns and then compare features to find the best match. However, the features extracted from images contain much redundant data, while the features extracted from patterns are greatly influenced by image segmentation methods. To tack these problems, this paper proposes a new finger vein recognition by generating code. The proposed method does not require an image segmentation algorithm, is simple to calculate and has a small amount of data. Firstly, the finger vein images were divided into blocks to calculate the mean value. Then the centrosymmetric coding is performed by using the generated eigenmatrix. The obtained codewords are concatenated as the feature codewords of the image. The similarity between vein codes is measured by the ratio of minimum Hamming distance to codeword length. Extensive experiments on two public finger vein databases verify the effectiveness of the proposed method. The results indicate that our method outperforms the state-of-theart methods and has competitive potential in performing the matching task.
翻译:作为最受欢迎和最有希望的生物测定方法之一,切取的血管识别作为最受欢迎和最有希望的生物测定方法之一,由于它的能力、安全性和非侵入性程序差异很大,因此引起越来越多的注意。传统方法的主要想法是直接从手指血管图像或图案中提取特征,然后对特征进行比较以找到最佳匹配。然而,从图像中提取的特征含有许多冗余数据,而从图案中提取的特征则受到图案分解方法的极大影响。为了解决这些问题,本文件建议通过生成代码来增加一种新的手指血管识别。拟议方法不需要图像分解算法,它很容易计算,并且拥有少量的数据。首先,手指血管图像被分成块来计算平均值。然后,通过使用生成的模子来进行正比编码。从图案中提取的代码是相配成的。为了测量血管代码之间的相似性,用最小的距离与编码长度的比例来衡量。两个公共切切取的实验可以核实拟议方法的有效性。结果显示,我们的方法比得超越了标准的方法,并且具有竞争的潜力。