使用多数投票技术的多模态疼痛水平识别

A. Salah, M. Khalil, Hazem M. Abbas
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引用次数: 3

摘要

主观疼痛的测量仍然是一个问题,特别是对于那些有语言或认知障碍的人。在这项工作中,我们分析了一些患者的问题,他们没有通过面部肌肉表达疼痛,而是通过自主神经系统不自觉地表达疼痛,可以在生理信号中观察到。提出了一种基于几何面部表情和生理信号训练的多模态模型集成学习算法。每个模型都提供了一个确定的度量,疼痛级别由最确定的模型分配。将所提出的系统与以前的模型进行了比较。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Multimodal Pain Level Recognition using Majority Voting Technique
The measurement of subjective pain is still a problem especially with people who have verbal or cognitive impairments. In this work, we analyze the problem of some patients who did not express their pain through their facial muscles, but they were expressing it involuntarily through the autonomic neural system that can be observed in the physiological signals. An ensemble learning algorithm consisting of multimodal models trained on the geometric facial expressions and the physiological signals is proposed. Each model provides a certainty measure and the pain level is assigned by the most certain model. The proposed system is compared with the previous models.
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