Multi Visual Modality Fall Detection Dataset
Stefan Denkovski, Shehroz S. Khan, Brandon Malamis, Sae Young Moon,, Bing Ye, Alex Mihailidis

TL;DR
This paper introduces a multi-modality dataset with infra-red, depth, RGB, and thermal cameras for fall detection, addressing real-world challenges and evaluating different camera modalities using anomaly detection techniques.
Contribution
It presents the first multi-modality fall detection dataset with real-world considerations and evaluates camera modalities using a novel anomaly detection approach.
Findings
Infra-red cameras achieved the highest performance (AUC ROC=0.94).
Thermal and depth cameras also showed high effectiveness.
RGB cameras had comparatively lower performance.
Abstract
Falls are one of the leading cause of injury-related deaths among the elderly worldwide. Effective detection of falls can reduce the risk of complications and injuries. Fall detection can be performed using wearable devices or ambient sensors; these methods may struggle with user compliance issues or false alarms. Video cameras provide a passive alternative; however, regular RGB cameras are impacted by changing lighting conditions and privacy concerns. From a machine learning perspective, developing an effective fall detection system is challenging because of the rarity and variability of falls. Many existing fall detection datasets lack important real-world considerations, such as varied lighting, continuous activities of daily living (ADLs), and camera placement. The lack of these considerations makes it difficult to develop predictive models that can operate effectively in the real…
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Taxonomy
TopicsContext-Aware Activity Recognition Systems · Anomaly Detection Techniques and Applications · Non-Invasive Vital Sign Monitoring
