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Comparison of Different Neural Networks for Iris Recognition: A Review

机译:虹膜识别的不同神经网络的比较:审查。

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Biometrics is the science of verifying the identity of an individual through physiological measurements or behavioral traits. Since biometric identifiers are associated permanently with the user they are more reliable than token or knowledge based authentication methods. Among all the biometric modalities, iris has emerged as a popular choice due to its variability, stability and security. In this paper, we are presenting the various iris recognition techniques and its learning algorithm with neural network. Implementation of various techniques can be standardized on dedicated architectures and learning algorithm. It has been observed that SOM has stronger adaptive capacity and robustness. HSOM, which is based on hamming distance, has improved accuracy over LSOM. SANN model is more suitable in measuring the shape similarity, while cascaded FFBPNN are more reliable and efficient method for iris recognition.
机译:生物识别技术是通过生理测量或行为特征来验证个人身份的科学。由于生物识别符与用户永久关联,因此它们比基于令牌或知识的身份验证方法更可靠。在所有的生物特征识别方式中,虹膜由于其可变性,稳定性和安全性已成为一种流行的选择。在本文中,我们将介绍各种虹膜识别技术及其通过神经网络的学习算法。可以在专用体系结构和学习算法上对各种技术的实现进行标准化。已经观察到,SOM具有更强的自适应能力和鲁棒性。基于海明距离的HSOM与LSOM相比具有更高的准确性。 SANN模型更适合于测量形状相似度,而级联FFBPNN是更可靠和有效的虹膜识别方法。

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