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Milestone of Pain Intensity Evaluation from Facial Action Units

机译:面部动作单位疼痛强度评估的里程碑

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A self-report pain scale is very subjective and lacks precise measure to determine the important levels of pain. Identifying milestone of pain intensity could, not only help healthcare professionals in assessing the intensity of pain at a particular time but is also significant for pain management evaluation on whether the onset of pain is sudden, gradual or part of an ongoing problem. This study has shown a novel approach on evaluating the timing information of pain by classifying section of frames where the pain was triggered, reached its climax and started to diminish. Convolutional neural network was used to extract features from UNBC McMaster Shoulder Pain Archive Database and intensities were derived from the Prkachin and Solomon Pain Intensity (PSPI) metric scale. Low pass filter was applied in smoothing discrete frame series data of pain. Relevant to the development of automatic pain intensity evaluation system, the study estimated sequence and frame-level of data based on the changes of intensity since onset and has shown 60% accuracy in evaluating pain carried out by the clinical experts.
机译:自我报告的痛尺度是非常主观的,缺乏精确的措施来确定重要的疼痛。识别疼痛强度的里程碑可以,不仅可以帮助医疗保健专业人员在评估特定时间的疼痛强度,而且对于疼痛的疼痛管理评估也很重要,但疼痛是否是突然的,渐进的或持续问题的一部分。本研究显示了一种新的方法,即通过分类疼痛被触发的框架分类来评估疼痛的时序信息,达到其高潮并开始减少。卷积神经网络用于从UNBC McMaster肩痛归档数据库中提取特征,并且来自Prkachin和所罗门疼痛强度(PSPI)公制量表的强度。应用低通滤波器在平滑离散帧系列疼痛数据中。与自动疼痛强度评估系统的开发相关,研究估计序列和基于发病强度变化的数据序列和帧级,并在评估临床专家进行的疼痛方面显示了60%的准确性。

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