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A shunting inhibitory convolutional neural network for Gender Classification

机译:用于性别分类的分流抑制卷积神经网络

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摘要

Demographic features, such as gender, are very important for human recognition and can be used to enhance social and biometric applications. In this paper, we propose to use a class of convolutional neural networks for gender classification. These networks are built upon the concepts of local receptive field processing and weight sharing, which makes them more tolerant to distortions and variations in two dimensional shapes. Tested on two separate data sets, the proposed networks achieve better classification accuracy than the conventional feedforward multilayer perceptron networks. On the Feret benchmark dataset, the proposed convolutional neural networks achieve a classification rate of 97.1%.
机译:人口统计特征(例如性别)对于人类识别非常重要,可用于增强社会和生物识别应用。在本文中,我们建议使用一类卷积神经网络进行性别分类。这些网络建立在局部接收场处理和权重共享的概念之上,这使它们更能容忍二维形状的失真和变化。在两个单独的数据集上进行测试,与传统的前馈多层感知器网络相比,该网络具有更好的分类精度。在Feret基准数据集上,提出的卷积神经网络实现了97.1%的分类率。

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