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Painful monitoring: Automatic pain monitoring using the UNBC-McMaster shoulder pain expression archive database

机译:痛苦监测:使用UNBC-McMaster肩膀疼痛表达档案数据库自动监测疼痛

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摘要

In intensive care units in hospitals, it has been recently shown that enormous improvements in patient outcomes can be gained from the medical staff periodically monitoring patient pain levels. However, due to the burden/stress that the staff are already under, this type of monitoring has been difficult to sustain so an automatic solution could be an ideal remedy. Using an automatic facial expression system to do this represents an achievable pursuit as pain can be described via a number of facial action units (Alls). To facilitate this work, the "University of Northern British Columbia-McMaster Shoulder Pain Expression Archive Database" was collected which contains video of participant's faces (who were suffering from shoulder pain) while they were performing a series of range-of-motion tests. Each frame of this data was AU coded by certified FACS coders, and self-report and observer measures at the sequence level were taken as well. To promote and facilitate research into pain and augmentcurrent datasets, we have publicly made available a portion of this database, which includes 200 sequences across 25 subjects, containing more than 48,000 coded frames of spontaneous facial expressions with 66-point AAM tracked facial feature landmarks. In addition to describing the data distribution, we give baseline pain and AU detection results on a frame-by-frame basis at the binary-level (i.e. AU vs. no-AU and pain vs. no-pain) using our AAM/SVM system. Another contribution we make is classifying pain intensities at the sequence-level by using facial expressions and 3D head pose changes.
机译:最近显示,在医院的重症监护室中,医护人员定期监测患者的疼痛程度可以大大改善患者的预后。但是,由于工作人员已经承受了沉重的负担/压力,这种监视很难维持,因此自动解决方案可能是理想的解决方法。使用自动面部表情系统执行此操作代表可以实现的追求,因为可以通过许多面部动作单元(Alls)来描述疼痛。为了促进这项工作,收集了“北英属哥伦比亚大学McMaster肩膀疼痛表情档案数据库”,其中包含参与者在进行一系列运动范围测试时脸部(遭受肩膀疼痛)的视频。该数据的每个帧均由经过认证的FACS编码器进行AU编码,并且还采取了序列级别的自报告和观察员措施。为了促进和促进对疼痛和增强电流数据集的研究,我们已公开提供该数据库的一部分,该数据库包含25个对象的200个序列,包含超过48,000个自发面部表情的编码帧以及66点AAM跟踪的面部特征界标。除了描述数据分布之外,我们还使用AAM / SVM在二进制级别上逐帧提供基线疼痛和AU检测结果(即AU vs. no-AU和疼痛vs. no-pain)。系统。我们做出的另一项贡献是通过使用面部表情和3D头部姿势变化在序列级别上对疼痛强度进行分类。

著录项

  • 来源
    《Image and Vision Computing》 |2012年第3期|p.197-205|共9页
  • 作者单位

    Disney Research Pittsburgh, Pittsburgh, PA, United States,Department of Psychology, University of Pittsburgh, Pittsburgh, PA, United States,Robotics Institute, Carnegie Mellon University, Pittsburgh, PA United States;

    Department of Psychology, University of Pittsburgh, Pittsburgh, PA, United States,Robotics Institute, Carnegie Mellon University, Pittsburgh, PA United States;

    Department of Psychology, University of Northern British Columbia, United States;

    School of Rehabilitation Sciences, McMaster University, Hamilton, Canada;

    SAIVT laboratory, Queensland University of Technology, Brisbane, Australia;

    Disney Research Pittsburgh, Pittsburgh, PA, United States,Robotics Institute, Carnegie Mellon University, Pittsburgh, PA United States;

  • 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

    pain; active appearance models (AAMs); action units (AUs); FACS;

    机译:痛;活动外观模型(AAM);行动单位(AU);流式细胞仪;

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