Multimodal fusion including camera photoplethysmography for pain recognition

Viktor Kessler, Patrick Thiam, Mohammadreza Amirian, F. Schwenker
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引用次数: 13

Abstract

The research in classifying affective states of a participant provided a great amount of feature extraction methods in several modalities like facial motion, speech, biophysiological signals and Action Units (AU). The ability of predicting the heart rate of a participant with remote Photoplethysmography (rPPG) from the video channel enables an interesting modality for classification of affective states but only few authors tried it. In this work, we present the rPPG signal as a new modality for pain classification and evaluate the benefit of a fusion with other modalities. In short the rPPG signal is filtered in multiple frequency ranges corresponding to the respiration rate as biophysiological signal. Then the pain is classified by fusing all modalities with a hierarchical fusion architecture. The performance could be increased around ∼1.4% with the rPPG signal even in combination with biophysiological signals from a biosignal amplifier.
多模态融合包括相机光电容积脉搏波识别疼痛
对参与者情感状态分类的研究提供了大量的面部运动、语音、生物生理信号和动作单位(Action Units, AU)等多种模式的特征提取方法。通过视频通道的远程光电脉搏波描记(rPPG)预测参与者心率的能力为情感状态分类提供了一种有趣的模式,但只有少数作者尝试过。在这项工作中,我们提出了rPPG信号作为疼痛分类的新模式,并评估了与其他模式融合的好处。简而言之,rPPG信号被过滤在与呼吸速率相对应的多个频率范围内作为生物生理信号。然后用分层融合架构融合所有模式对疼痛进行分类。即使与来自生物信号放大器的生物生理信号结合使用,rPPG信号的性能也可以提高约1.4%。
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