Although pain is frequent in old age, older adults are often undertreated for pain. This is especially the case for long-term care residents with moderate to severe dementia who cannot report their pain because of cognitive impairments that accompany dementia. Nursing staff acknowledge the challenges of effectively recognizing and managing pain in long-term care facilities due to lack of human resources and, sometimes, expertise to use validated pain assessment approaches on a regular basis. Vision-based ambient monitoring will allow for frequent automated assessments so care staff could be automatically notified when signs of pain are displayed. However, existing computer vision techniques for pain detection are not validated on faces of older adults or people with dementia, and this population is not represented in existing facial expression datasets of pain. We present the first fully automated vision-based technique validated on a dementia cohort. Our contributions are threefold. First, we develop a deep learning-based computer vision system for detecting painful facial expressions on a video dataset that is collected unobtrusively from older adult participants with and without dementia. Second, we introduce a pairwise comparative inference method that calibrates to each person and is sensitive to changes in facial expression while using training data more efficiently than sequence models. Third, we introduce a fast contrastive training method that improves cross-dataset performance. Our pain estimation model outperforms baselines by a wide margin, especially when evaluated on faces of people with dementia. Pre-trained model and demo code available at https://github.com/TaatiTeam/pain_detection_demo
翻译:虽然老年时经常发生疼痛,但老年老人往往得不到治疗以忍受疼痛;对于患有中度至严重痴呆症、因痴呆而不能报告其疼痛的长期护理居民来说,情况尤其如此;护理工作人员承认,由于缺乏人力资源,有时由于缺乏定期使用经验证的疼痛评估方法的专门知识,在长期护理设施有效认识和管理疼痛方面面临着挑战;基于愿景的环境监测将允许经常进行自动化评估,以便在出现疼痛迹象时自动通知护理工作人员;然而,现有的疼痛检测计算机视觉技术没有在老年人或痴呆症患者的脸上验证,而这种人群没有体现在现有的面部表达痛苦数据集中。我们介绍的是由于缺乏人力资源,有时由于缺乏定期使用经验证的疼痛评估方法,在长期护理设施中有效认识和管理疼痛;首先,我们开发了一个基于深层学习的计算机视觉系统,用以检测视频数据集中痛苦的面部表情,该数据集从老年成人参与者那里收集出不难堪的模范,而没有痴呆症症状。 其次,我们引入了一种与每个人相对齐的比较推比方法的比较方法,在进行快速分析时,我们采用快速分析的排序时,在进行我们进行感化的排序上对质分析后,对质分析后,对质分析后,我们采用一种对结果进行敏感的分析,对质分析,对质分析后,对质分析后,对质分析后对质分析后,对质分析后,对质分析后对质分析后,对质分析后,对质分析后,对质分析后,对质分析后对质分析后对质分析后对质分析后期数据,对质分析。