基于多算法和评分级融合的手掌静脉识别

Xuekui Yan, F. Deng, Wenxiong Kang
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引用次数: 11

摘要

为了提高掌纹识别算法的识别率,本文提出了一种基于SIFT和ORB特征提取及分数级融合的掌纹识别算法。分数级融合是一种信息融合技术,它有六个常见的组合规则。本文提出了两个动态权值组合规则作为补充。该算法的主要步骤是:首先从配准的手掌静脉图像和待匹配的手掌静脉图像中提取感兴趣区域(ROI)并进行锐化增强处理,然后分别提取SIFT特征和ORB特征并获得匹配分数,最后利用分数级融合计算最终分数进行决策。在CASIA手掌静脉图像数据库上的实验表明,该算法利用最小规则获得了最好的识别率,平均错误率(EER)为0.36%。
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Palm Vein Recognition Based on Multi-algorithm and Score-Level Fusion
In order to improve the recognition rate of palm vein recognition algorithm, a recognition algorithm based on SIFT and ORB features extraction and score-level fusion is presented in this paper. Score-level fusion is an information fusion technique, which has six common combination rules. Two dynamic weight combination rules are proposed as a supplement here. The main steps of the proposed algorithm are: First, extract Region of interest (ROI) from the registered palm vein image and the to-be-matched palm vein image and process them with sharpen enhancement, and then extract SIFT features and ORB features and obtain matching scores respectively, finally utilize score-level fusion to compute the final score for decision. The experiments on the CASIA Palm Vein Image Database show that the algorithm attains the best recognition rate by utilizing the min-rule, and the equal error rate (EER) is 0.36%.
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