基于组合分割验证方法的日语签名验证改进

Yuta Kamihira, W. Ohyama, T. Wakabayashi, F. Kimura
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引用次数: 7

摘要

本文提出了一种基于离线特征和在线特征的组合分割验证技术。我们使用了三种不同的离线特征向量,这些特征向量分别取自日语签名的全名和姓的子图像。计算每个离线特征向量的马氏距离进行签名验证。基于在线特征的技术采用动态规划(DP)匹配技术对签名的时间序列数据进行匹配。基于三个马氏距离和DP匹配的不相似度,由支持向量机进行最终决策(验证)。在评价试验中,该方法在FRR和FAR均匀的情况下,验证准确率达到97.22%,比单个方法获得的最佳准确率高出3.95%。结果表明,本文提出的组合分割验证方法显著提高了日文签名的验证精度。
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Improvement of Japanese Signature Verification by Combined Segmentation Verification Approach
This paper proposes a new signature verification technique called combined segmentation-verification based on off-line features and on-line features. We use three different off-line feature vectors extracted from full name Japanese signature image and from the sub-images of the first name and the last name. The Mahalanobis distance for each offline feature vector is calculated for signature verification. The on-line feature based technique employs dynamic programming (DP) matching technique for time series data of the signatures. The final decision (verification) is performed by SVM based on the three Mahalanobis distances and the dissimilarity of the DP matching. In the evaluation test the proposed technique achieved 97.22% verification accuracy with even FRR and FAR, which is 3.95% higher than the best accuracy obtained by the individual technique. This result shows that the proposed combined segmentation verification approach improves Japanese signature verification accuracy significantly.
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