Depth-Weighted Detection of Behaviours of Risk in People with Dementia using Cameras
Pratik K. Mishra, Irene Ballester, Andrea Iaboni, Bing Ye, Kristine Newman, Alex Mihailidis, Shehroz S. Khan

TL;DR
This paper presents a depth-weighted detection system for identifying risky behaviors in dementia patients using cameras, reducing false alarms and improving safety monitoring in care facilities.
Contribution
The study introduces a novel depth-weighted loss function and utilizes training outliers to enhance behavior detection accuracy in dementia care environments.
Findings
Achieved AUC scores of 0.852, 0.81, and 0.768 across three cameras.
Reduced false alarms compared to previous methods.
Analyzed cross-camera, participant-specific, and sex-specific behavior detection performance.
Abstract
The behavioural and psychological symptoms of dementia, such as agitation and aggression, present a significant health and safety risk in residential care settings. Many care facilities have video cameras in place for digital monitoring of public spaces, which can be leveraged to develop an automated behaviours of risk detection system that can alert the staff to enable timely intervention and prevent the situation from escalating. However, one of the challenges in our previous study was the presence of false alarms due to disparate importance of events based on distance. To address this issue, we proposed a novel depth-weighted loss to enforce equivalent importance to the events happening both near and far from the cameras; thus, helping to reduce false alarms. We further propose to utilize the training outliers to determine the anomaly threshold. The data from nine dementia…
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Taxonomy
TopicsEmotion and Mood Recognition · Dementia and Cognitive Impairment Research · Digital Mental Health Interventions
