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Painful data: The UNBC-McMaster shoulder pain expression archive database

机译:痛苦的数据:UNBC-McMaster肩痛表达档案数据库

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A major factor hindering the deployment of a fully functional automatic facial expression detection system is the lack of representative data. A solution to this is to narrow the context of the target application, so enough data is available to build robust models so high performance can be gained. Automatic pain detection from a patient's face represents one such application. To facilitate this work, researchers at McMaster University and University of Northern British Columbia captured video of participant's faces (who were suffering from shoulder pain) while they were performing a series of active and passive range-of-motion tests to their affected and unaffected limbs on two separate occasions. 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. This database is called the UNBC-McMaster Shoulder Pain Expression Archive Database. To promote and facilitate research into pain and augment current datasets, we have publicly made available a portion of this database which includes: 1) 200 video sequences containing spontaneous facial expressions, 2) 48,398 FACS coded frames, 3) associated pain frame-by-frame scores and sequence-level self-report and observer measures, and 4) 66-point AAM landmarks. This paper documents this data distribution in addition to describing baseline results of our AAM/SVM system. This data will be available for distribution in March 2011.
机译:阻碍部署功能齐全的自动面部表情检测系统的主要因素是缺乏代表性数据。解决方案是缩小目标应用程序的上下文,以便有足够的数据来构建健壮的模型,从而获得高性能。从患者面部自动检测疼痛就是一种这样的应用。为了促进这项工作,麦克马斯特大学和北不列颠哥伦比亚大学的研究人员在对参与者的患肢和未患肢进行一系列主动和被动运动范围测试时,拍摄了参与者面部(遭受肩痛)的视频在两个不同的场合。该数据的每一帧均由经过认证的FACS编码器进行AU编码,并且还采用了序列级别的自我报告和观察员措施。该数据库称为UNBC-McMaster肩膀疼痛表情存档数据库。为了促进和促进对疼痛的研究并增加当前的数据集,我们公开提供了该数据库的一部分,其中包括:1)200个包含自发面部表情的视频序列,2)48,398个FACS编码帧,3)与疼痛相关的逐帧-帧得分和序列级别的自我报告和观察者测量,以及4)66点AAM地标。本文除了描述我们的AAM / SVM系统的基线结果外,还记录了这种数据分布。该数据将于2011年3月发布。

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