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Video-Based Disguise Face Recognition Based on Deep Spiking Neural Network

机译:基于深度尖峰神经网络的基于视频的伪装人脸识别

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Face is a vital biometric for personal identification. However, the current video-based face recognition methods could not cope with large variances such as heavy makeups, disguised faces with rubber/digital masks or faces with certain areas (eyes, nose, or mouth) invisible. In this paper, we proposed a deep spiking neural network (SNN) architecture with the dynamic facial movements (facial muscle changes caused by speaking) as the sole input for the video-based disguise face recognition application. An event-driven continuous spike-timing dependent plasticity (STDP) learning algorithm with adaptive thresholding has been applied to train the synaptic weights. The proposed video-based disguise face recognition (VDFR) learning method achieves 95% correct classification rate on our proposed video-based disguise face database (MakeFace DB).
机译:面部是个人识别的重要生物识别。然而,目前的基于视频的面部识别方法无法应对大型差异,例如沉重的化妆品,伪装的面孔与橡胶/数字面罩或面孔,具有某些区域(眼睛,鼻子或嘴巴)看不见。在本文中,我们提出了一种深度尖峰神经网络(SNN)架构,具有动态面部运动(由讲台引起的面部肌肉变化)作为基于视频的伪装人脸识别应用的唯一输入。具有自适应阈值化的事件驱动的连续峰值定时依赖性可塑性(STDP)学习算法已应用于培训突触权重。所提出的基于视频的伪装人物识别(VDFR)学习方法在我们提出的基于视频的伪装面部数据库(MakeFace DB)上实现了95%的正确分类率。

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