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Iris image recognition using optimized Kohonen self organizing neural network

机译:使用优化的Kohonen自组织神经网络的虹膜图像识别

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The pursuit to develop an effective people management system has widened over the years to manage the enormous increase in population. Any management system includes identification, verification and recognition stages. Iris recognition has become notable biometrics to support the management system due to its versatility and non-invasive approach. These systems help to identify the individual with the texture information distributed around the iris region. Many classification algorithms are available to help in iris recognition. But those are very sophisticated and require heavy computation. In this paper, an improved Kohonen self-organizing neural network (KSONN) is used to boost the performance of existing KSONN. This improvement is brought by the introduction of optimization technique into the learning phase of the KSONN. The proposed method shows improved accuracy of the recognition. Moreover, it also reduces the iterations required to train the network. From the experimental results, it is observed that the proposed method achieves a maximum accuracy of 98% in 85 iterations.
机译:多年来,开发有效的人员管理系统的努力已扩大,以管理人口的大量增加。任何管理系统都包括识别,验证和识别阶段。虹膜识别由于其多功能性和非侵入性方法,已成为支持管理系统的著名生物识别技术。这些系统有助于利用分布在虹膜区域周围的纹理信息来识别个人。许多分类算法可用于帮助虹膜识别。但是这些非常复杂,需要大量的计算。本文采用改进的Kohonen自组织神经网络(KSONN)来提高现有KSONN的性能。通过将优化技术引入KSONN的学习阶段,可以带来这种改进。所提出的方法显示出提高的识别精度。而且,它还减少了训练网络所需的迭代。从实验结果可以看出,该方法在85次迭代中达到了98%的最大精度。

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