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Automatic coding of facial expressions displayed during posed and genuine pain

机译:在姿势和真正疼痛期间显示的面部表情的自动编码

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We present initial results from the application of an automated facial expression recognition system to spontaneous facial expressions of pain. In this study, 26 participants were videotaped under three experimental conditions: baseline, posed pain, and real pain. The real pain condition consisted of cold pressor pain induced by submerging the arm in ice water. Our goal was to (1) assess whether the automated measurements were consistent with expression measurements obtained by human experts, and (2) develop a classifier to automatically differentiate real from faked pain in a subject-independent manner from the automated measurements. We employed a machine learning approach in a two-stage system. In the first stage, a set of 20 detectors for facial actions from the Facial Action Coding System operated on the continuous video stream. These data were then passed to a second machine learning stage, in which a classifier was trained to detect the difference between expressions of real pain and fake pain. Naive human subjects tested on the same videos were at chance for differentiating faked from real pain, obtaining only 49% accuracy. The automated system was successfully able to differentiate faked from real pain. In an analysis of 26 subjects with faked pain before real pain, the system obtained 88% correct for subject independent discrimination of real versus fake pain on a 2-alternative forced choice. Moreover, the most discriminative facial actions in the automated system were consistent with findings using human expert FACS codes.
机译:我们提出了从自动面部表情识别系统应用到疼痛的自发面部表情的初步结果。在这项研究中,在以下三个实验条件下对26名参与者进行了录像:基线,姿势性疼痛和真实性疼痛。真正的疼痛状况包括手臂浸入冰水中引起的冷压痛。我们的目标是(1)评估自动测量值是否与人类专家获得的表达测量值一致,以及(2)开发分类器,以独立于受试者的方式自动区分真假假疼痛与自动测量。我们在两阶段系统中采用了机器学习方法。在第一阶段,一组来自面部动作编码系统的20个面部动作检测器在连续视频流上运行。然后将这些数据传递到第二个机器学习阶段,在该阶段中,训练了分类器以检测真实疼痛和假疼痛的表达之间的差异。在同一视频上测试的天真人类受试者有机会区分假冒和真实的疼痛,仅获得49%的准确性。自动化系统成功地将假货与真正的痛苦区分开。在对26名在真实痛苦之前有假痛苦的受试者进行的分析中,系统通过2种强制选择对受试者对真实痛苦与假痛苦的独立区分获得了88%的正确率。此外,自动化系统中最具判别力的面部动作与使用人类专家FACS代码的发现相一致。

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