Institute of Biomedical Engineering, University of Toronto, Toronto, Canada.
KITE-Toronto Rehabilitation Institute, University Health Network, Toronto, Canada.
Biomed Eng Online. 2023 Jan 21;22(1):4. doi: 10.1186/s12938-023-01065-3.
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, analysing 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 or used 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 showed our results on a real-world study conducted in a dementia care unit with patients with dementia, containing approximately 21 h of normal activities data for training and 9 h of data containing normal and behaviours of risk events for testing. We compared our approaches with the original RGB videos and obtained a similar 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. Our research opens up new avenues to reduce injuries in long-term care homes, improve the quality of life of residents, and design privacy-aware approaches for people living in the community.
患有痴呆症的人经常表现出痴呆症的行为和心理症状,这可能会对他们和他人的安全造成威胁。长期护理机构中现有的视频监控系统可用于监测此类风险行为,以提醒工作人员在某些情况下预防潜在的伤害或死亡。然而,与正常事件相比,这些风险行为事件具有异质性和罕见性。此外,分析原始视频也会引发隐私问题。
本文提出了两种新颖的基于视频的隐私保护异常检测方法,用于检测痴呆症患者的风险行为。
我们要么提取身体姿势信息作为骨架,要么使用语义分割掩模将场景中的多个人类替换为他们的语义边界。我们的工作与大多数现有的基于视频异常检测的方法不同,后者侧重于基于外观的特征,这可能会使个人的隐私受到威胁,并且还容易受到基于像素的噪声的影响,包括光照和观察方向。我们使用经过匿名处理的正常活动视频来训练定制的时空卷积自动编码器,并将风险行为识别为异常。
我们在一个痴呆症护理单元进行的真实研究中展示了我们的结果,该研究包含大约 21 小时的正常活动数据用于训练和 9 小时包含正常和风险行为事件的数据用于测试。我们将我们的方法与原始 RGB 视频进行了比较,基于骨架的方法获得了相似的接收器操作特征曲线下面积 0.807,基于分割掩模的方法获得了 0.823。
这是首次将隐私纳入痴呆症患者风险行为检测的研究之一。我们的研究为减少长期护理院中的伤害、提高居民的生活质量以及为居住在社区中的人们设计具有隐私意识的方法开辟了新途径。