Title :
A Real-Time, Multiview Fall Detection System: A LHMM-Based Approach
Author :
Thome, Nicolas ; Miguet, Serge ; Ambellouis, Sébastien
Author_Institution :
Lab. Electron., Villeneuve-d´´Ascq
Abstract :
Automatic detection of a falling person in video sequences has interesting applications in video-surveillance and is an important part of future pervasive home monitoring systems. In this paper, we propose a multiview approach to achieve this goal, where motion is modeled using a layered hidden Markov model (LHMM). The posture classification is performed by a fusion unit, merging the decision provided by the independently processing cameras in a fuzzy logic context. In each view, the fall detection is optimized in a given plane by performing a metric image rectification, making it possible to extract simple and robust features, and being convenient for real-time purpose. A theoretical analysis of the chosen descriptor enables us to define the optimal camera placement for detecting people falling in unspecified situations, and we prove that two cameras are sufficient in practice. Regarding event detection, the LHMM offers a principle way for solving the inference problem. Moreover, the hierarchical architecture decouples the motion analysis into different temporal granularity levels, making the algorithm able to detect very sudden changes, and robust to low-level steps errors.
Keywords :
feature extraction; fuzzy logic; hidden Markov models; image sequences; object detection; video cameras; video surveillance; automatic detection; cameras; falling person; feature extraction; fuzzy logic context; home monitoring systems; layered hidden Markov model; metric image rectification; motion analysis; multiview fall detection system; video classification; video sequences; video surveillance; Fall detection; layered hidden Markov model (LHMM); metric rectification; multiview pose classification;
Journal_Title :
Circuits and Systems for Video Technology, IEEE Transactions on
DOI :
10.1109/TCSVT.2008.2005606