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Facial Expression Recognition Using Deep Boltzmann Machine from Thermal Infrared Images

机译:来自热红外图像的深层螺栓机机的面部表情识别

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Facial expression recognition from thermal infrared images has attracted more and more attentions in recent years. However, the features adopted in current work are either temperature statistical parameters extracted from the facial regions of interest or several hand-crafted features that are commonly used in visible spectrum. Till now there is no image features specially defined for thermal infrared images. In this paper, we are the first to propose using the Deep Boltzmann Machine to learn thermal features for expression recognition from thermal long wavelength infrared images. First, the face are located and normalized from the thermal infrared images. Then, a Deep Boltzmann Machine model composed of two layers is proposed. The parameters of the Deep Boltzmann Machine model are further fine-tuned for facial expression recognition after pre-training of feature learning. Comparison experimental results on the NVIE database demonstrate that our approach outperforms other approaches using temperature statistic features or hand-crafted features borrowed from visible domain. The learned features from the forehead, mouth, and cheek are more reliable for discriminating disgust, fear, and happiness compared with other facial areas.
机译:来自热红外图像的面部表情识别近年来吸引了越来越多的注意。然而,当前工作中采用的特征是从感兴趣的面部区域提取的温度统计参数或通常用于可见光谱中的几种手工制作的特征。到目前为止,没有专门为热红外图像定义的图像。在本文中,我们是第一个使用Deep Boltzmann机器学习热特征来从热长波长红外图像学习热特征。首先,面部位于并从热红外图像归一化。然后,提出了由两层组成的深螺栓牌机模型。在特征学习预训练之后,深螺栓电机模型的参数进一步微调面部表情识别。 NVIE数据库上的比较实验结果表明,我们的方法优于使用从可见域借用的温度统计特征或手工制作功能的其他方法。与其他面部领域相比,额头,嘴巴和脸颊的学到额头,嘴巴和脸颊更加可靠。

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