Title :
DEWS: A Live Visual Surveillance System for Early Drowning Detection at Pool
Author :
Eng, How-Lung ; Toh, Kar-Ann ; Yau, Wei-Yun ; Wang, Junxian
Author_Institution :
Inst. for Infocomm Res., Singapore
Abstract :
A real-time vision system operating at an outdoor swimming pool is presented in this paper. The system is designed to automatically recognize different swimming activities and to detect occurrence of early drowning incidents. We have named this system the Drowning Early Warning System (DEWS). One key challenge we faced in the problem is the relatively high level of noise in the steps of foreground detection and behavior recognition. Therefore, a set of methods in the fields of background subtraction, denoising, data fusion and blob splitting are proposed, which have been motivated by characteristics of aquatic background and crowded scenario at the pool. In the step to detect an early drowning incident, visual indicators of distress and drowning are incorporated through a set of foreground descriptors. A module comprising data fusion and hidden Markov modeling is developed to learn unique traits of different swimming behaviors, in particular, those early drowning events. The experiment of this work reports realistic on-site evaluations performed. Examples of interesting behaviors, i.e., distress, drowning, treading and numerous swimming styles, are simulated and collected. Experimental results show that we have established a prototype system which is robust and beyond the stage of proof-of-concept.
Keywords :
computer vision; hidden Markov models; image denoising; image fusion; image recognition; object detection; video surveillance; DEWS; Drowning Early Warning System; background subtraction; behavior recognition; blob splitting; data fusion; denoising; distress visual indicators; early drowning detection; foreground detection; hidden Markov modeling; live visual surveillance system; outdoor swimming pool; real-time vision system; Crowded scenario; Real-time video surveillance system; crowded scenario; dynamic aquatic background; foreground silhouette extraction; modeling of water crisis behaviors; real-time video surveillance system;
Journal_Title :
Circuits and Systems for Video Technology, IEEE Transactions on
DOI :
10.1109/TCSVT.2007.913960