People living with dementia often exhibit behavioural and psychological symptoms of dementia that can put their and others' safety at risk. Existing video surveillance systems in long-term care facilities can be used to monitor such behaviours of risk to alert the staff to prevent potential injuries or death in some cases. However, these behaviours of risk events are heterogeneous and infrequent in comparison to normal events. Moreover, analyzing raw videos can also raise privacy concerns. In this paper, we present two novel privacy-protecting video-based anomaly detection approaches to detect behaviours of risks in people with dementia. We either extracted body pose information as skeletons and use semantic segmentation masks to replace multiple humans in the scene with their semantic boundaries. Our work differs from most existing approaches for video anomaly detection that focus on appearance-based features, which can put the privacy of a person at risk and is also susceptible to pixel-based noise, including illumination and viewing direction. We used anonymized videos of normal activities to train customized spatio-temporal convolutional autoencoders and identify behaviours of risk as anomalies. We show our results on a real-world study conducted in a dementia care unit with patients with dementia, containing approximately 21 hours of normal activities data for training and 9 hours of data containing normal and behaviours of risk events for testing. We compared our approaches with the original RGB videos and obtained an equivalent area under the receiver operating characteristic curve performance of 0.807 for the skeleton-based approach and 0.823 for the segmentation mask-based approach. This is one of the first studies to incorporate privacy for the detection of behaviours of risks in people with dementia.
翻译:长期护理设施中现有的视频监视系统可用来监测这种风险行为,以便提醒工作人员注意某些情况下可能出现的伤害或死亡。然而,这些风险事件的行为是多种多样的,与正常事件相比并不常见。此外,原始视频分析还可能引起隐私问题。在本文件中,我们介绍了两种新的基于隐私的保护视频异常检测方法,以发现患有痴呆症的人的风险行为。我们抽取的尸体要么将信息作为骨骼,使用语义分解面具取代现场的多人,以其语义界限取代现场的多人。我们的工作不同于大多数现有的侧重于外观特征的视频异常检测方法,这些特征可能使人的隐私面临风险,并且还容易受到基于像素的噪音,包括照明和观察方向。我们使用了基于隐私保护视频的普通活动匿名视频,以培训自定义的垃圾-情绪自动分解器,并将风险行为确认为异常。我们用正常的视频分解方法,在正常的R时间里,我们用正常的运行行为方法,在21小时的测试中,我们用正常的运行行为方法,在21小时的测试中,我们用正常的运行过程中,在21小时的测试中进行正常的动作中,在21小时中进行数据测试。