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A face detection system using shunting inhibitory convolutional neural networks

机译:使用分流抑制卷积神经网络的人脸检测系统

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We present a face detection system based on a class of convolutional neural networks, namely shunting inhibitory convolutional neural networks (SICoNNets). The topology of these networks is a flexible feedforward architecture with three different connections schemes: fully-connected, toeplitz-connected and binary-connected. SICoNNets were trained, using a hybrid method based on Rprop, Quickprop and least squares, to discriminate between face and non-face patterns. All three connection schemes achieve 99% detection accuracy at 5% false alarm rate, based on a test set of 7000 face and non-face patterns. Furthermore, toeplitz-connected network was trained on a larger training set and has achieved a 99% correct classification rate with only 1% false alarm rate based on the same test set. A face detection system is built based on the trained convolutional neural networks. The system accepts an input image of arbitrary size and localizes the face patterns in the image. To localize faces of different sizes, the convolutional neural network is applied as a face detection filter at different scales. The detection scores from different scales are aggregated together to form the final decision.
机译:我们提出了基于一类卷积神经网络的面部检测系统,即分流抑制卷积神经网络(SICoNNets)。这些网络的拓扑结构是一种灵活的前馈体系结构,具有三种不同的连接方案:完全连接,toeplitz连接和二进制连接。使用基于Rprop,Quickprop和最小二乘法的混合方法对SICoNNets进行了训练,以区分面部和非面部图案。基于7000个面部和非面部模式的测试集,所有这三种连接方案均以5%的误报率实现了99%的检测精度。此外,连接到Toeplitz的网络是在更大的训练集上进行训练的,基于相同的测试集,它实现了99%的正确分类率和仅1%的误报率。基于训练的卷积神经网络构建了面部检测系统。系统接受任意大小的输入图像,并在图像中定位面部图案。为了定位不同大小的面部,将卷积神经网络用作不同比例的面部检测过滤器。来自不同等级的检测分数将汇总在一起,以形成最终决策。

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