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Using automated computer vision and machine learning to code facial expressions of affect and arousal: Implications for emotion dysregulation research

机译:使用自动化计算机视觉和机器学习来代码影响情感和唤醒的面部表达:对情感失调研究的影响

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As early as infancy, caregivers’ facial expressions shape children's behaviors, help them regulate their emotions, and encourage or dissuade their interpersonal agency. In childhood and adolescence, proficiencies in producing and decoding facial expressions promote social competence, whereas deficiencies characterize several forms of psychopathology. To date, however, studying facial expressions has been hampered by the labor-intensive, time-consuming nature of human coding. We describe a partial solution: automated facial expression coding (AFEC), which combines computer vision and machine learning to code facial expressions in real time. Although AFEC cannot capture the full complexity of human emotion, it codes positive affect, negative affect, and arousal—core Research Domain Criteria constructs—as accurately as humans, and it characterizes emotion dysregulation with greater specificity than other objective measures such as autonomic responding. We provide an example in which we use AFEC to evaluate emotion dynamics in mother–daughter dyads engaged in conflict. Among other findings, AFEC (a) shows convergent validity with a validated human coding scheme, (b) distinguishes among risk groups, and (c) detects developmental increases in positive dyadic affect correspondence as teen daughters age. Although more research is needed to realize the full potential of AFEC, findings demonstrate its current utility in research on emotion dysregulation.
机译:早在婴儿期间,护理人员的面部表情塑造了儿童的行为,帮助他们调节他们的情绪,鼓励或劝阻他们的人际关系代理。在童年和青春期,生产和解码面部表情的潜在促进社会能力,而缺陷表征了几种心理病理学的形式。然而,迄今为止,研究面部表情受到人类编码的劳动密集型,耗时的性质的阻碍。我们描述了一个部分解决方案:自动面部表情编码(AFEC),将计算机视觉和机器学习与实时相结合的代码面部表达式。虽然AFEC不能捕捉人类情感的全部复杂性,但它根据人类准确地代码了阳性影响,负面影响和谐波核心研究域标准 - 尽可能准确地表征具有比自主响应等其他客观措施更大的特异性的情感失调。我们提供了一个例子,其中我们使用AFEC评估从事冲突的母女电片的情感动态。在其他发现之外,AFEC(a)显示了具有验证人编码方案的会聚有效性,(b)区分风险群体,(c)检测阳性二元影响的发育增加作为青少年女儿年龄的逆转录。虽然需要更多的研究来实现AFEC的全部潜力,但调查结果展示了其当前在情感失调的研究中的效用。

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