Edge based selective encryption scheme for biometric data using chaotic theory

Garima Mehta, M. Dutta, C. Travieso-González, Pyung Soo Kim
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引用次数: 7

Abstract

Security of biometric data plays a major concern due to extensive use of biometric systems in many applications. This paper proposes an efficient method for encryption of iris images using edge based encryption algorithm based on chaotic theory. In this proposed technique, the iris image is segmented into significant and non significant blocks to find region of interest (ROI) i.e. to localize iris from complete eye image from which features are extracted to generate biometric template. Selective encryption is used to encrypt the region of interest and it reduces the computational overhead and processing time as compared to full encryption techniques. The experimental results prove that edge based selective encryption significantly reduces the time of encryption of iris images as compared to full encryption method without any compromise in performance. Performance of proposed algorithm has been experimentally analyzed using key sensitivity analysis and the results prove that the encryption algorithm has high key sensitivity and the algorithm is lossless in nature.
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基于混沌理论的生物特征数据边缘选择性加密方案
由于生物识别系统在许多应用中的广泛使用,生物识别数据的安全性成为一个主要问题。提出了一种基于混沌理论的基于边缘的虹膜图像加密算法。在该技术中,虹膜图像被分割成重要和不重要的块,以找到感兴趣的区域(ROI),即从完整的眼睛图像中定位虹膜,从中提取特征以生成生物识别模板。选择性加密用于加密感兴趣的区域,与完全加密技术相比,它减少了计算开销和处理时间。实验结果表明,与完全加密方法相比,基于边缘的选择性加密大大减少了虹膜图像的加密时间,且不影响性能。利用密钥灵敏度分析对算法性能进行了实验分析,结果证明该算法具有较高的密钥灵敏度和无损性。
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