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An Efficient Iris Recognition Method Based on Restricted Boltzmann Machine

机译:基于受限制的Boltzmann机器的高效虹膜识别方法

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As one of major methods for iris feature extraction, 2D-Gabor filter is capable of texture features in different directions and scales. Restricted Boltzmann Machine (RBM) is quite favored because of its simple structure and fastness in classification. However, due to conflicts between the feature vector dimension and the complexity of the network structure, rarely few combine them for iris recognition. This paper proposes a multi-class iris recognition method which combines 2D-Gabor feature extraction and classification model of RBM together. Firstly, 2D-Gabor filter is employed to extract energy-orientation feature of iris texture, whose dimension will not increase with the increasing number of filters. In this case, as the number of nodes in hidden layers of RBM network is determined to a definite value, complexity of the whole RBM design is simplified. Experiments show that this method displays high recognition accuracy on sample sets.
机译:作为虹膜特征提取的主要方法之一,2D-Gabor滤波器能够在不同方向和尺度的纹理特征。由于其在分类中的结构简单和牢度,受限制的Boltzmann机(RBM)非常受欢迎。但是,由于特征矢量维之间的冲突和网络结构的复杂性,很少有很少的组合它们用于虹膜识别。本文提出了一种多级虹膜识别方法,将2D-Gabor特征提取和RBM的分类模型结合在一起。首先,采用2D-Gabor滤波器提取虹膜纹理的能量导向特征,其尺寸不会随着越来越多的滤波器而增加。在这种情况下,随着RBM网络的隐藏层中的节点的数量被确定为明确的值,简化了整个RBM设计的复杂性。实验表明,该方法在采样集上显示了高识别精度。

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