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首页> 外文期刊>International Journal of Computational Intelligence and Applications >HIERARCHICAL STRUCTURE BASED CONVOLUTIONAL NEURAL NETWORK FOR FACE RECOGNITION
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HIERARCHICAL STRUCTURE BASED CONVOLUTIONAL NEURAL NETWORK FOR FACE RECOGNITION

机译:基于层次结构的卷积神经网络的人脸识别

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In this paper, a hierarchical structure based convolutional neural network is proposed to provide the ability for robust information processing. The weight sharing ability of convolutional neural networks (CNNs) is considered as a level of hierarchy in these networks. Weight sharing reduces the number of free parameters and improves the generalization ability. In the proposed structure, a small CNN which is used for feature extractor is shared between the whole input image pixels. A scalable architecture for implementing extensive CNNs is resulted using a smaller and modularized trainable network to solve a large and complicated task. The proposed structure causes less training time, fewer numbers of parameters and higher test data accuracy. The recognition accuracy for recognizing unseen data shows improvement in generalization. Also presented are application examples for face recognition. The comprehensive experiments completed on ORL, Yale and JAFFE face databases show improved classification rates and reduced training time and network parameters.
机译:本文提出了一种基于层次结构的卷积神经网络,以提供鲁棒的信息处理能力。卷积神经网络(CNN)的权重共享能力被视为这些网络中的层次结构级别。权重分配减少了自由参数的数量并提高了泛化能力。在提出的结构中,在整个输入图像像素之间共享一个用于特征提取的小型CNN。使用较小且模块化的可训练网络,可以解决大型和复杂任务,从而实现了用于实施广泛的CNN的可伸缩体系结构。所提出的结构导致更少的训练时间,更少的参数数量和更高的测试数据准确性。用于识别看不见的数据的识别精度显示出普遍性的提高。还介绍了人脸识别的应用示例。在ORL,Yale和JAFFE人脸数据库上完成的综合实验表明,改进了分类率,并减少了训练时间和网络参数。

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