Effect of sensor fusion for recognition of emotional states using voice, face image and thermal image of face

T. Kitazoe, Sung-Ill Kim, Y. Yoshitomi, Tatsuhiko Ikeda
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引用次数: 168

Abstract

A new integrated method is presented to recognize the emotional expressions of human using both voices and facial expressions. For voices, we use such prosodic parameters as pitch signals, energy, and their derivatives, which are trained by hidden Markov model for recognition. For facial expressions, we use feature parameters from thermal images in addition to visible images, which are trained by neural networks for recognition. The thermal images are observed by infrared ray which is not influenced by lighting conditions. The total recognition rates show better performance than that obtained from each single experiment. The results are compared with the recognition by human questionnaire.
传感器融合对语音、人脸图像和人脸热图像情绪状态识别的影响
提出了一种结合声音和面部表情识别人类情感表情的综合方法。对于声音,我们使用音调信号、能量及其衍生物等韵律参数,并通过隐马尔可夫模型进行训练进行识别。对于面部表情,除了使用可见光图像外,我们还使用热图像中的特征参数,这些特征参数通过神经网络训练进行识别。热像采用不受光照条件影响的红外线观测。总体识别率优于单个实验的识别率。并将结果与人工问卷识别结果进行了比较。
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