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Multi-Source Heterogeneous Iris Recognition Using Stacked Convolutional Deep Belief Networks-Deep Belief Network Model

机译:多源异构虹膜识别使用堆叠的卷积深度信仰网络 - 深度信仰网络模型

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摘要

With the development of iris recognition technology, sensors of iris images acquisition are being constantly developed and updated. Re-register users every time a new sensor is deployed is time-consuming and complicated, especially in applications with large-scale registered users. Therefore, it is a challenging problem to choose the common recognition model which is effective for multi-source heterogeneous iris recognition(MSH-IR). The paper proposes a efficient neural network model of stacked Convolutional Deep Belief Networks-Deep Belief Network (CDBNs-DBN) for MSH-IR. The main improvements are two parts: firstly, this model uses the region-by-region extraction method and positions the convolution kernel through the offset of the hidden layer to locate the effective local texture feature structure. Secondly, the model uses DBN as a classifier in order to reduce the reconstruction error through the negative feedback mechanism of the auto-encoder. Experimental results have been implemented on publicly available IIT Delhi iris database, which is captured by three different iris captured sensors. Experiments shows the model performs strong robustness performance and recognition ability.
机译:随着虹膜识别技术的发展,虹膜图像采集传感器也在不断发展和更新。每次部署新传感器时重新注册用户既耗时又复杂,尤其是在具有大规模注册用户的应用程序中。因此,在多源异构虹膜识别(MSH-IR)中,如何选择有效的通用识别模型是一个具有挑战性的问题。本文提出了一种用于MSH-IR的叠层卷积深度置信网络(CDBNs DBN)的高效神经网络模型。主要的改进包括两个部分:首先,该模型采用逐区域提取的方法,通过隐藏层偏移量定位卷积核,定位有效的局部纹理特征结构。其次,该模型使用DBN作为分类器,通过自动编码器的负反馈机制减少重建误差。实验结果已经在公开的IIT德里虹膜数据库上实现,该数据库由三个不同的虹膜捕获传感器捕获。实验表明,该模型具有较强的鲁棒性和识别能力。

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