Detekcja upadku i wybranych akcji na sekwencjach obraz\'ow cyfrowych
Michal Kepski

TL;DR
This paper presents efficient, privacy-preserving algorithms for fall detection using image sequences and inertial sensors, achieving high sensitivity and specificity suitable for real-time applications on low-power devices.
Contribution
The work introduces novel algorithms for fall detection that combine depth map descriptors and inertial data, optimized for low computational resources and real-time performance.
Findings
High sensitivity and specificity in fall detection
Algorithms suitable for ARM platforms
Successful real-time person detection and tracking
Abstract
In recent years a growing interest on action recognition is observed, including detection of fall accident for the elderly. However, despite many efforts undertaken, the existing technology is not widely used by elderly, mainly because of its flaws like low precision, large number of false alarms, inadequate privacy preserving during data acquisition and processing. This research work meets these expectations. The work is empirical and it is situated in the field of computer vision systems. The main part of the work situates itself in the area of action and behavior recognition. Efficient algorithms for fall detection were developed, tested and implemented using image sequences and wireless inertial sensor worn by a monitored person. A set of descriptors for depth maps has been elaborated to permit classification of pose as well as the action of a person. Experimental research was…
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Taxonomy
TopicsContext-Aware Activity Recognition Systems · Gait Recognition and Analysis · Human Pose and Action Recognition
