Probability Boltzmann Machine Network for Face Detection on Video

X. Ye, Bisheng Ji, Xueting Chen, Dingwei Qian, Zhijing Zhao
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引用次数: 1

Abstract

By the multi-layer nonlinear mapping and the semantic feature extraction of the deep learning, a deep learning network is proposed for video face detection to overcome the challenge of detecting faces rapidly and accurately in video with changeable background. Particularly, a pre-training procedure is used to initialize the network parameters to avoid falling into the local optimum, and the greedy layer-wise learning is introduced in the pre-training to avoid the training error transfer in layers. Key to the network is that the probability of neurons models the status of human brain neurons which is a continuous distribution from the most active to the least active and the hidden layer’s neuron number decreases layer-by-layer to reduce the redundant information of the input data. Moreover, the skin color detection is used to accelerate the detection speed by generating candidate regions. Experimental results show that, besides the faster detection speed and robustness against face rotation, the proposed method possesses lower false detection rate and lower missing detection rate than traditional algorithms.
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基于概率玻尔兹曼网络的视频人脸检测
通过多层非线性映射和深度学习的语义特征提取,提出了一种用于视频人脸检测的深度学习网络,克服了在多变背景视频中快速准确检测人脸的挑战。其中,利用预训练方法对网络参数进行初始化,避免网络陷入局部最优,并在预训练中引入贪婪的分层学习,避免训练误差在各层间传递。该网络的关键是神经元的概率模拟了人脑神经元的状态,神经元的状态是一个从最活跃到最不活跃的连续分布,隐藏层的神经元数量逐层减少,以减少输入数据的冗余信息。此外,肤色检测通过生成候选区域来加快检测速度。实验结果表明,该方法除了具有较快的检测速度和对人脸旋转的鲁棒性外,还具有较低的误检率和漏检率。
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