A novel biometric system for signature verification based on score level fusion approach

Multimedia Tools and Applications(2022)

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摘要
The active modality of handwriting is broadly related to signature verification in the context of biometric user authentication systems. Signature verification aims to verify a questioned signature as being genuine or forged compared to some previously provided signatures from the claimed person. By doing so, we may be able to verify a person’s identity at accuracy and speed even better than human performance. Application areas of signature verification include different purposes and principally in access controls and forensic document examination. This work presents a novel biometric system for signature verification. We propose a new model that we called the Extended Beta-elliptic model and we integrate the fuzzy elementary perceptual codes (FEPC) to extract static and dynamic features. To discriminate the genuine and forgery signatures of a user, we explore a fusion using the sum rule combiner of three scores which are deep bidirectional long short-term memory (deep BiLSTM), support vector machine (SVM) with Dynamic Time Warping (DTW), and SVM with a new proposed parameter comparator. Our system has been evaluated on two publicly available online signature databases namely SVC2004 Task 2 and MCYT-100, and it shows promising performance gains.
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关键词
Biometric system,online signature verification,score level fusion,Dynamic Time Warping
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