Abstract

Behavioural symptoms of dementia present a significant risk within Long Term Care (LTC) homes, which face difficulties supporting residents and monitoring their safety with limited staffing resources. Many LTC facilities have installed video surveillance systems in common areas that can help staff to observe residents; however, typically these video streams are not monitored. In this paper, we present the development of a computer vision algorithm to use these video streams to detect episodes of clinically important agitation in people with dementia. Given that episodes of agitation are rare in comparison to normal behaviours, we formulated this as an anomaly detection problem. This involves using the video camera to monitor the scene rather than tracking individuals. We developed a customized spatio-temporal convolution autoencoder that is trained on the normal behaviours and then identified agitation during testing as anomalous behaviour. We present a proof-of-concept using video data collected from a specialized dementia unit and annotated for agitation events. We trained the unsupervised neural network on approximately 24 hours of normal activities and tested on 11 hours of videos containing both normal activities and agitation events, and obtained an area under the curve of the receiver operating characteristic curve of 0.754. This research paves the way for leveraging existing surveillance infrastructure in LTC and other mental health settings to detect agitation or aggression, with the potential for improved health and safety.

Highlights

  • Dementia is a disorder of progressive impairments of cognitive functions such as memory, language, and executive functioning, and can impact on insight, impulse control and judgement [1]

  • We present this work as a proof-of-concept of an unsupervised deep learning approach, in which we train a spatio-temporal convolutional autoencoder only on the video recordings of normal behaviour of people with dementia (PwD) and identify agitation during testing as anomalous behaviour

  • EXPERIMENTS AND RESULTS The video data from one camera view was used, which included the participant of interest as well as many other patients, staff and visitors who appear in the scene

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Summary

Introduction

Dementia is a disorder of progressive impairments of cognitive functions such as memory, language, and executive functioning, and can impact on insight, impulse control and judgement [1]. These cognitive changes contribute to changes in behaviour, which include behaviours that place the people with dementia (PwD) or those around them at risk, such as agitation [2]–[4]. Many PwD who need supervision and support live in. LTC home environments often suffer from a lack of staffing and financial resources that impacts on the quality of care of residents [6]

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