Emotional Artificial Intelligence Enabled Facial Expression Recognition for Tele-Rehabilitation: A Preliminary Study

Davide Ciraolo, A. Celesti, M. Fazio, Mirjam Bonanno, M. Villari, R. Calabró
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Abstract

Tele-rehabilitation has recently emerged as an effective approach for providing assisted living, increasing clinical outcomes, positively enhancing patients' Quality of Life (QoL) and fostering their reintegration into society, also pushing down clinical costs. Nowadays, tele-rehabilitation has to face two main challenges: motor and cognitive rehabilitation. In this paper, we focus on the latter. Our idea is to monitor the patient's cognitive rehabilitation by analysing his/her facial expressions during motor rehabilitation exercises with the objective to understand if there is a correlation between motor and cognitive outcomes. Therefore, the aim of this preliminary study is to leverage the concept of Emotional Artificial Intelligence (AI) with a Facial Expression Recognition (FER) system which uses the face mesh generated by the MediaPipe suite of libraries to train a Machine Learning (ML) model in order to identify the facial expressions, according to the Ekman's model, contained inside images or video captured during motor rehabilitation exercises performed at home. In particular, different datasets, face features maps and ML models are tested providing an advancement in the state of the art.
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情感人工智能在远程康复中面部表情识别的初步研究
远程康复最近成为一种提供辅助生活、提高临床结果、积极提高患者生活质量(QoL)和促进他们重新融入社会的有效方法,也降低了临床成本。目前,远程康复面临着两大挑战:运动康复和认知康复。在本文中,我们主要关注后者。我们的想法是通过分析患者在运动康复训练中的面部表情来监测患者的认知康复,目的是了解运动和认知结果之间是否存在相关性。因此,这项初步研究的目的是利用情感人工智能(AI)和面部表情识别(FER)系统的概念,该系统使用MediaPipe库套件生成的面部网格来训练机器学习(ML)模型,以便识别面部表情,根据Ekman的模型,包含在家中进行运动康复练习期间捕获的图像或视频。特别是,不同的数据集,人脸特征地图和机器学习模型进行了测试,提供了最先进的技术。
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