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An Efficient Approach towards Iris Recognition with Modular Neural Network Match Score Fusion

机译:用模块化神经网络匹配得分融合了一种有效的虹膜识别方法

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The recognition system when concerned with high-security, authentication of authorized person and invalidation of an imposter is a vital task for the system. The system based on iris feature is considered as highly secure and most reliable system due to the intrinsic property of an iris. This paper presents an efficient iris recognition approach based on the fusion of modular neural network output scores in order to improve the recognition performance of the system. Multimedia University V2 (MMU2) Iris database obtained from the public domain digital repository has been used to evaluate the performance of the proposed approach by considering different performance measures. The experimental results demonstrate the efficiency of the proposed approach for both identification and verification performance of the system. The proposed approach achieved 98.57% recognition accuracy in verification mode and 96.86% recognition accuracy in identification mode with the considered dataset.
机译:识别系统涉及高安全性,授权人的身份验证和冒名者的失效是系统的重要任务。由于虹膜的内在属性,基于IRIS功能的系统被认为是非常安全和最可靠的系统。本文提出了一种基于模块化神经网络输出分数的融合的有效虹膜识别方法,以提高系统的识别性能。从公共域数字存储库获得的多媒体大学V2(MMU2)虹膜数据库已被用于通过考虑不同的性能措施来评估所提出的方法的性能。实验结果表明了该系统识别和验证性能的提出方法的效率。拟议的方法在验证模式中实现了98.57%的识别准确性和识别模式中的识别模式96.86%的识别准确性。

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