Litcius/Paper detail

Automated Depth Video Monitoring For Fall Reduction : A Case Study

Josh Brown Kramer, Lucas Sabalka, B. Rush, Katherine Jones, Tegan Nolte

202013 citationsDOI

Abstract

Patient falls are a common, costly, and serious safety problem in hospitals and healthcare facilities. We have created a system that reduces falls by using computer vision to monitor fall risk patients and alert staff of unsafe behavior before a fall happens. This paper is a companion and followup to "Modeling bed exit likelihood in a camera-based automated video monitoring application," in which we describe the Ocuvera system. [1] Here additional details are provided on that system and its processes. We report clinical results, detail practices used to iterate rapidly and effectively on a massive video database, discuss details of our people tracking algorithms, and discuss the engineering effort required to support the new Azure Kinect depth camera.

Topics & Concepts

Computer scienceReduction (mathematics)Artificial intelligenceTracking (education)Video monitoringComputer visionReal-time computingGeometryMathematicsPedagogyPsychologyContext-Aware Activity Recognition SystemsBalance, Gait, and Falls PreventionAnomaly Detection Techniques and Applications