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Multimodal Biometric System:- Fusion Of Face And Fingerprint Biometrics At Match Score Fusion Level

机译:多峰生物特征识别系统:-在比赛分数融合级别融合人脸和指纹生物特征

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Biometrics has developed to be one of the most relevant technologies used in Information Technology (IT) security. Unimodal biometric systems have a variety of problems which decreases the performance and accuracy of these system. One way to overcome the limitations of the unimodal biometric systems is through fusion to form a multimodal biometric system. Generally, biometric fusion is defined as the use of multiple types of biometric data or ways of processing the data to improve the performance of biometric systems. This paper proposes to develop a model for fusion of the face and fingerprint biometric at the match score fusion level. The face and fingerprint unimodal in the proposed model are built using scale invariant feature transform (SIFT) algorithm and the hamming distance to measure the distance between key points. To evaluate the performance of the multimodal system the FAR and FRR of the multimodal are compared along those of the individual unimodal systems. It has been established that the multimodal has a higher accuracy of 92.5% compared to the face unimodal system at 90% while the fingerprint unimodal system is at 82.5%.
机译:生物识别技术已发展成为信息技术(IT)安全中使用的最相关技术之一。单峰生物特征识别系统存在许多问题,这些问题降低了这些系统的性能和准确性。克服单峰生物识别系统局限性的一种方法是通过融合形成多峰生物识别系统。通常,生物特征融合定义为使用多种类型的生物特征数据或处理数据的方式以改善生物特征系统的性能。本文提出了在匹配分数融合水平上开发人脸和指纹生物特征融合的模型。该模型的人脸和指纹单峰模型是使用尺度不变特征变换(SIFT)算法和汉明距离来测量关键点之间的距离而构建的。为了评估多峰系统的性能,将多峰的FAR和FRR与单个单峰系统的FAR和FRR进行了比较。已经确定,与面部单峰系统的90%相比,多峰模式具有92.5%的更高准确度,而指纹单峰系统则为82.5%。

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