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The painful face - Pain expression recognition using active appearance models

机译:痛苦的面孔-使用主动外观模型的疼痛表情识别

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摘要

Pain is typically assessed by patient self-report. Self-reported pain, however, is difficult to interpret and may be impaired or in some circumstances (i.e., young children and the severely ill) not even possible. To circumvent these problems behavioral scientists have identified reliable and valid facial indicators of pain. Hitherto, these methods have required manual measurement by highly skilled human observers. In this paper we explore an approach for automatically recognizing acute pain without the need for human observers. Specifically, our study was restricted to automatically detecting pain in adult patients with rotator cuff injuries. The system employed video input of the patients as they moved their affected and unaffected shoulder. Two types of ground truth were considered. Sequence-level ground truth consisted of Likert-type ratings by skilled observers. Frame-level ground truth was calculated from presence/ absence and intensity of facial actions previously associated with pain. Active appearance models (AAM) were used to decouple shape and appearance in the digitized face images. Support vector machines (SVM) were compared for several representations from the AAM and of ground truth of varying granularity. We explored two questions pertinent to the construction, design and development of automatic pain detection systems. First, at what level (i.e., sequence- or frame-level) should datasets be labeled in order to obtain satisfactory automatic pain detection performance? Second, how important is it, at both levels of labeling, that we non-rigidly register the face?
机译:疼痛通常由患者自我报告评估。但是,自我报告的疼痛难以解释,可能会受损,或者在某些情况下(例如,幼儿和重病)甚至不可能。为了避免这些问题,行为科学家已经确定了可靠且有效的面部疼痛指标。迄今为止,这些方法需要熟练的人类观察者进行手动测量。在本文中,我们探索了一种无需人类观察者即可自动识别急性疼痛的方法。具体来说,我们的研究仅限于自动检测成人肩袖损伤患者的疼痛。该系统在患者移动受影响和未受影响的肩膀时采用视频输入。考虑了两种类型的地面真理。序列级别的地面真相由熟练的观察者所用的李克特式评级组成。帧级地面真相是根据以前与疼痛相关的面部动作的有无来计算的。主动外观模型(AAM)用于将数字化面部图像中的形状和外观分离。对支持向量机(SVM)进行了比较,比较了AAM的几种表示形式以及粒度不同的地面真实情况。我们探讨了与自动疼痛检测系统的构建,设计和开发有关的两个问题。首先,应在什么级别(即序列级别或帧级别)标记数据集,以获得令人满意的自动疼痛检测性能?第二,在两个标签级别上,我们非严格地注册面部有多重要?

著录项

  • 来源
    《Image and Vision Computing》 |2009年第12期|1788-1796|共9页
  • 作者单位

    University of Pittsburgh, Psychology 3137 Sennott Square, 210 S. Bouquet St., Pittsburgh, PA 15260, USA;

    University of Pittsburgh, Psychology 3137 Sennott Square, 210 S. Bouquet St., Pittsburgh, PA 15260, USA;

    University of Pittsburgh, Psychology 3137 Sennott Square, 210 S. Bouquet St., Pittsburgh, PA 15260, USA;

    University of Pittsburgh, Psychology 3137 Sennott Square, 210 S. Bouquet St., Pittsburgh, PA 15260, USA;

    University of Pittsburgh, Psychology 3137 Sennott Square, 210 S. Bouquet St., Pittsburgh, PA 15260, USA;

    University of Pittsburgh, Psychology 3137 Sennott Square, 210 S. Bouquet St., Pittsburgh, PA 15260, USA;

    University of Pittsburgh, Psychology 3137 Sennott Square, 210 S. Bouquet St., Pittsburgh, PA 15260, USA;

  • 收录信息 美国《科学引文索引》(SCI);美国《工程索引》(EI);
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类
  • 关键词

    active appearance models; support vector machines; pain; facial expression; automatic facial image analysis; FACS;

    机译:活动外观模型;支持向量机;痛;表情;自动面部图像分析;流式细胞仪;

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