Automatic detection of pain intensity.

Zakia Hammal, Jeffrey F Cohn
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Abstract

Previous efforts suggest that occurrence of pain can be detected from the face. Can intensity of pain be detected as well? The Prkachin and Solomon Pain Intensity (PSPI) metric was used to classify four levels of pain intensity (none, trace, weak, and strong) in 25 participants with previous shoulder injury (McMaster-UNBC Pain Archive). Participants were recorded while they completed a series of movements of their affected and unaffected shoulders. From the video recordings, canonical normalized appearance of the face (CAPP) was extracted using active appearance modeling. To control for variation in face size, all CAPP were rescaled to 96×96 pixels. CAPP then was passed through a set of Log-Normal filters consisting of 7 frequencies and 15 orientations to extract 9216 features. To detect pain level, 4 support vector machines (SVMs) were separately trained for the automatic measurement of pain intensity on a frame-by-frame level using both 5-folds cross-validation and leave-one-subject-out cross-validation. F1 for each level of pain intensity ranged from 91% to 96% and from 40% to 67% for 5-folds and leave-one-subject-out cross-validation, respectively. Intra-class correlation, which assesses the consistency of continuous pain intensity between manual and automatic PSPI was 0.85 and 0.55 for 5-folds and leave-one-subject-out cross-validation, respectively, which suggests moderate to high consistency. These findings show that pain intensity can be reliably measured from facial expression in participants with orthopedic injury.

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自动检测疼痛强度
以往的研究表明,可以从面部检测到疼痛的发生。那么疼痛强度是否也能被检测出来呢?我们使用 Prkachin 和 Solomon 疼痛强度 (PSPI) 指标对 25 名肩部受过伤的参与者(麦克马斯特-UNBC 疼痛档案)的疼痛强度进行了四级分类(无、微弱、弱和强)。参与者在完成受影响和未受影响肩部的一系列动作时被录制下来。通过主动外观建模,从视频记录中提取了脸部的规范化外观(CAPP)。为了控制脸部大小的变化,所有 CAPP 都被重新调整为 96×96 像素。然后,将 CAPP 通过一组包含 7 个频率和 15 个方向的对数正态滤波器,提取出 9216 个特征。为了检测疼痛程度,使用 5 倍交叉验证和排除一个受试者交叉验证分别训练了 4 个支持向量机 (SVM),用于逐帧自动测量疼痛强度。在 5 倍交叉验证和留空一个受试者交叉验证中,每个疼痛强度级别的 F1 分别为 91% 至 96% 和 40% 至 67%。评估手动和自动 PSPI 之间连续疼痛强度一致性的类内相关性在五折交叉验证和留出一个受试者交叉验证中分别为 0.85 和 0.55,这表明类内相关性为中度到高度一致。这些研究结果表明,可以通过面部表情可靠地测量骨科损伤参与者的疼痛强度。
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