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The Automatic Detection of Chronic Pain-Related Expression: Requirements Challenges and the Multimodal EmoPain Dataset

机译:慢性疼痛相关表达的自动检测:需求挑战和多模式EmoPain数据集

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摘要

Pain-related emotions are a major barrier to effective self rehabilitation in chronic pain. Automated coaching systems capable of detecting these emotions are a potential solution. This paper lays the foundation for the development of such systems by making three contributions. First, through literature reviews, an overview of how pain is expressed in chronic pain and the motivation for detecting it in physical rehabilitation is provided. Second, a fully labelled multimodal dataset (named ‘EmoPain’) containing high resolution multiple-view face videos, head mounted and room audio signals, full body 3D motion capture and electromyographic signals from back muscles is supplied. Natural unconstrained pain related facial expressions and body movement behaviours were elicited from people with chronic pain carrying out physical exercises. Both instructed and non-instructed exercises were considered to reflect traditional scenarios of physiotherapist directed therapy and home-based self-directed therapy. Two sets of labels were assigned: level of pain from facial expressions annotated by eight raters and the occurrence of six pain-related body behaviours segmented by four experts. Third, through exploratory experiments grounded in the data, the factors and challenges in the automated recognition of such expressions and behaviour are described, the paper concludes by discussing potential avenues in the context of these findings also highlighting differences for the two exercise scenarios addressed.
机译:与疼痛有关的情绪是慢性疼痛中有效自我康复的主要障碍。能够检测这些情绪的自动教练系统是一种潜在的解决方案。本文通过做出三点贡献为此类系统的开发奠定了基础。首先,通过文献综述,概述了慢性疼痛如何表达疼痛以及在物理康复中发现疼痛的动机。其次,提供了一个带有完整标签的多模式数据集(名为“ EmoPain”),其中包含高分辨率多视点面部视频,头戴式和室内音频信号,全身3D运动捕捉和来自背部肌肉的肌电信号。从患有慢性疼痛的人进行体育锻炼中诱发出与疼痛无关的自然自然的面部表情和身体运动行为。有指导的和无指导的练习都被认为反映了物理治疗师指导治疗和家庭自我指导治疗的传统情况。分配了两组标签:由八名评分者注释的面部表情引起的疼痛程度,以及由四位专家细分的六种与疼痛有关的身体行为的发生。第三,通过以数据为基础的探索性实验,描述了自动识别此类表情和行为的因素和挑战,本文通过讨论这些发现的背景下的潜在途径得出结论,并着重强调了所解决的两种锻炼方案的差异。

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