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Multi-Modal Pain Intensity Recognition Based on the SenseEmotion Database

IEEE Transactions on Affective Computing(2021)CCF BSCI 2区

Ulm Univ | Zurich Univ Appl Sci | Univ Augsburg | Cheju Halla Univ

Cited 55|Views64
Abstract
The subjective nature of pain makes it a very challenging phenomenon to assess. Most of the current pain assessment approaches rely on an individual's ability to recognise and report an observed pain episode. However, pain perception and expression are affected by numerous factors ranging from personality traits to physical and psychological health state. Hence, several approaches have been proposed for the automatic recognition of pain intensity, based on measurable physiological and audiovisual parameters. In the current paper, an assessment of several fusion architectures for the development of a multi-modal pain intensity classification system is performed. The contribution of the presented work is two-fold: (1) 3 distinctive modalities consisting of audio, video and physiological channels are assessed and combined for the classification of several levels of pain elicitation. (2) An extensive assessment of several fusion strategies is carried out in order to design a classification architecture that improves the performance of the pain recognition system. The assessment is based on the SenseEmotion Database and experimental validation demonstrates the relevance of the multi-modal classification approach, which achieves classification rates of respectively 83.39%, 59.53% and 43.89% in a 2-class, 3-class and 4-class pain intensity classification task.
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Pain intensity recognition,multiple classifier systems,multi-modal information fusion,signal processing
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要点】:本文提出了一种基于音频、视频和生理信号的三模态疼痛强度识别方法,并通过对比多种融合策略,设计了一种提升疼痛识别系统性能的分类架构。

方法】:研究采用了多种融合架构,对音频、视频和生理三种不同模态的数据进行综合分析,以实现对疼痛强度的分类。

实验】:实验基于SenseEmotion数据库进行,结果在二分类、三分类和四分类的疼痛强度分类任务中分别达到了83.39%、59.53%和43.89%的分类准确率。