基于面部表情的疼痛识别和强度分类

W. A. Shier, S. Yanushkevich
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引用次数: 10

摘要

面部生物识别技术,特别是面部表情分析,是创建能够检测和分类人类受试者疼痛的自动化系统的最活跃的研究课题之一。本文比较分析了基于Gabor能量滤波的方法与强大的分类器(如支持向量机)相结合,用于疼痛检测和三个级别的分类。疼痛强度用Prkachin和Solomon疼痛强度量表来标记。在本文中,强度水平被量化为三个不相交的组:无痛,弱痛和强痛。实验结果表明,Gabor能量过滤器提供了与先前基于过滤器的疼痛识别方法相当或更好的结果,疼痛与无疼痛的分类率为74%,区分无疼痛、弱疼痛和强疼痛的准确率分别为74%、30%和78%。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Pain recognition and intensity classification using facial expressions
Facial biometrics, specifically facial expression analysis, is one of the most actively investigated topics towards the creation of an automated system capable of detecting and classifying pain in human subjects. This paper presents a comparative analysis of Gabor energy filter based approaches combined with powerful classifiers, such as Support Vector Machines, for pain detection and classification into three levels. The intensity of pain is labelled using the Prkachin and Solomon Pain Intensity scale. In this paper, the levels of intensity have been quantized into three disjoint groups: no pain, weak pain and strong pain. The results of experiments show that Gabor energy filters provide comparable or better results compared to previous filter-based pain recognition methods, with a 74% classification rate of pain versus no pain, and 74%, 30% and 78% precision rates when distinguishing pain into no pain, weak pain and strong pain respectively.
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