视频序列中的自发疼痛表情识别

Z. Hammal, M. Kunz, M. Arguin, F. Gosselin
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引用次数: 22

摘要

疼痛表情的自动识别具有潜在的医学意义。本文介绍了一种自动面部表情识别系统在自然疼痛表情序列上的应用结果。20名参与者在接受非疼痛和疼痛强度的热刺激时被录像。实验中使用基于peltier1的计算机热刺激器和一个3 × 3 cm2的接触探针来诱导疼痛。我们的目标是自动识别引起疼痛的视频。我们选择了一种机器学习方法,该方法之前曾成功地用于基于可转移信念模型(Transferable Belief Model)对摆出的数据集中的六种基本面部表情进行分类[1,2]。在本文中,我们将该模型扩展到自发疼痛表达序列的识别。该方法的创新之处在于利用动态信息识别自发的疼痛表情,并结合不同的传感器:面部特征行为、瞬态特征和表情研究的背景。实验结果表明,当我们使用上下文信息时,自发疼痛序列的分类率很高。此外,在另一种情况下,系统行为比人类观察者更有利,这为所提出系统的未来发展开辟了有希望的前景。
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Spontaneous Pain Expression Recognition in Video Sequences
Automatic recognition of Pain expression has potential medical significance. In this paper we present results of the application of an automatic facial expression recognition system on sequences of spontaneous Pain expression. Twenty participants were videotaped while undergoing thermal heat stimulation at nonpainful and painful intensities. Pain was induced experimentally by use of a Peltierbased, computerized thermal stimulator with a 3 × 3 cm2 contact probe. Our aim is to automatically recognize the videos where Pain was induced. We chose a machine learning approach, previously used successfully to categorize the six basic facial expressions in posed datasets [1, 2] based on the Transferable Belief Model. For this paper, we extended this model to the recognition of sequences of spontaneous Pain expression. The originality of the proposed method is the use of the dynamic information for the recognition of spontaneous Pain expression and the combination of different sensors: facial features behavior, transient features and the context of the expression study. Experimental results show good classification rates for spontaneous Pain sequences especially when we use the contextual information. Moreover the system behaviour compares favourably to the human observer in the other case, which opens promising perspectives for the future development of the proposed system.
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