Multimodal Convolutional Neural Network Model for Protective Behavior Detection based on Body Movement Data

Kim Ngan Phan, Soohyung Kim, Hyung-Jeong Yang, Gueesang Lee
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引用次数: 1

Abstract

Chronic pain treatment is a significant challenge in the healthcare industry. Physiotherapists tailor physical activity to a patient's activity based on their expression in protective behavior through pain recognition and find the special equipment to help them perform the necessary tasks. The technology can detect and assess pain behavior that could support the delivery of personalized therapies in the long-term and self-directed management of the condition to improve engagement in valued everyday activities. In this paper, we present an approach for task 1 of the Affective Movement Recognition (AffectMove) Challenge in 2021. Our proposed approach using deep learning helps detect persistent protective behavior present or absent during exercise in a person with chronic pain, based on the full-body joint position and back muscle activity of EmoPain challenge 2021 dataset. We employ convolutional neural networks by stacking residual blocks for the multimodal model. Moreover, we suggest new feature groups as additional inputs that help to increase performance for protective behavior. The proposed approach achieves an F1 score of 78.56% on validation set and 59.11% on test set. The proposed approach also outperforms previous baselines in detecting protective behavior from the EmoPain dataset.
基于身体运动数据的多模态卷积神经网络保护行为检测模型
慢性疼痛治疗是医疗保健行业的一个重大挑战。物理治疗师根据患者通过疼痛识别而表现出的保护行为,为患者量身定制身体活动,并找到帮助他们完成必要任务的特殊设备。该技术可以检测和评估疼痛行为,从而在长期和自我指导的病情管理中支持个性化治疗的提供,以提高对有价值的日常活动的参与。在本文中,我们提出了2021年情感运动识别(AffectMove)挑战任务1的方法。基于EmoPain挑战2021数据集的全身关节位置和背部肌肉活动,我们提出的使用深度学习的方法有助于检测慢性疼痛患者在运动期间存在或不存在的持续保护行为。对于多模态模型,我们通过堆叠残差块来使用卷积神经网络。此外,我们建议新的功能组作为额外的输入,以帮助提高保护行为的性能。该方法在验证集上的F1得分为78.56%,在测试集上的F1得分为59.11%。该方法在检测EmoPain数据集的保护行为方面也优于以前的基线。
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