Privacy-Protecting Behaviours of Risk Detection in People with Dementia using Videos
Pratik K. Mishra, Andrea Iaboni, Bing Ye, Kristine Newman, Alex, Mihailidis, Shehroz S. Khan

TL;DR
This paper introduces two privacy-preserving video anomaly detection methods using skeletons and semantic masks to identify risky behaviors in dementia patients, maintaining high detection accuracy while protecting individual privacy.
Contribution
The work presents novel privacy-aware video analysis techniques for detecting risky behaviors in dementia care, using anonymized data and specialized autoencoders, differing from appearance-based methods.
Findings
Achieved AUC of 0.807 with skeleton-based approach.
Achieved AUC of 0.823 with segmentation mask-based approach.
Demonstrated effectiveness on real-world dementia care data.
Abstract
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 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…
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Taxonomy
TopicsAnomaly Detection Techniques and Applications · Psychiatry, Mental Health, Neuroscience · Machine Learning in Healthcare
