Fall Detection With Multiple Cameras: An Occlusion-Resistant Method Based on 3-D Silhouette Vertical Distribution

According to the demographic evolution in industrialized countries, more and more elderly people will experience falls at home and will require emergency services. The main problem comes from fall-prone elderly living alone at home. To resolve this lack of safety, we propose a new method to detect falls at home, based on a multiple-cameras network for reconstructing the 3-D shape of people. Fall events are detected by analyzing the volume distribution along the vertical axis, and an alarm is triggered when the major part of this distribution is abnormally near the floor during a predefined period of time, which implies that a person has fallen on the floor. This method was validated with videos of a healthy subject who performed 24 realistic scenarios showing 22 fall events and 24 cofounding events (11 crouching position, 9 sitting position, and 4 lying on a sofa position) under several camera configurations, and achieved 99.7% sensitivity and specificity or better with four cameras or more. A real-time implementation using a graphic processing unit (GPU) reached 10 frames per second (fps) with 8 cameras, and 16 fps with 3 cameras.

[1]  J. Hindmarsh,et al.  Falls in older persons. Causes and interventions. , 1989, Archives of internal medicine.

[2]  T. M. Kashner,et al.  Predictors of functional recovery one year following hospital discharge for hip fracture: a prospective study. , 1990, Journal of gerontology.

[3]  A. Laurentini,et al.  The Visual Hull Concept for Silhouette-Based Image Understanding , 1994, IEEE Trans. Pattern Anal. Mach. Intell..

[4]  Janne Heikkilä,et al.  A four-step camera calibration procedure with implicit image correction , 1997, Proceedings of IEEE Computer Society Conference on Computer Vision and Pattern Recognition.

[5]  L. Chambers,et al.  Sensory Impairments among Canadians 55 years and Older: An Analysis of 1986 and 1991 Health and Activity Limitation Survey , 1997 .

[6]  S. L. Murphy,et al.  Deaths: final data for 1997. , 1999, National vital statistics reports : from the Centers for Disease Control and Prevention, National Center for Health Statistics, National Vital Statistics System.

[7]  R. Cumming,et al.  Interventions for preventing falls in the elderly. , 2000 .

[8]  S. L. Murphy Deaths: final data for 1998. , 2000, National vital statistics reports : from the Centers for Disease Control and Prevention, National Center for Health Statistics, National Vital Statistics System.

[9]  G. Wu,et al.  Distinguishing fall activities from normal activities by velocity characteristics. , 2000, Journal of biomechanics.

[10]  Jean-Yves Bouguet,et al.  Camera calibration toolbox for matlab , 2001 .

[11]  R. Cumming,et al.  WITHDRAWN: Interventions for preventing falls in elderly people. , 2009, The Cochrane database of systematic reviews.

[12]  B. Munoz,et al.  Falls and Fear of Falling: Which Comes First? A Longitudinal Prediction Model Suggests Strategies for Primary and Secondary Prevention , 2002, Journal of the American Geriatrics Society.

[13]  R. Cumming,et al.  Interventions for preventing falls in elderly people. , 2003, The Cochrane database of systematic reviews.

[14]  Massimo Piccardi,et al.  Background subtraction techniques: a review , 2004, 2004 IEEE International Conference on Systems, Man and Cybernetics (IEEE Cat. No.04CH37583).

[15]  Yap-Peng Tan,et al.  Fall Incidents Detection for Intelligent Video Surveillance , 2005, 2005 5th International Conference on Information Communications & Signal Processing.

[16]  Alex Mihailidis,et al.  An intelligent emergency response system: preliminary development and testing of automated fall detection , 2005, Journal of telemedicine and telecare.

[17]  C. Rougier,et al.  Monocular 3D Head Tracking to Detect Falls of Elderly People , 2006, 2006 International Conference of the IEEE Engineering in Medicine and Biology Society.

[18]  S. Miaou,et al.  A Customized Human Fall Detection System Using Omni-Camera Images and Personal Information , 2006, 1st Transdisciplinary Conference on Distributed Diagnosis and Home Healthcare, 2006. D2H2..

[19]  Itaru Kitahara,et al.  Compensated Visual Hull for Defective Segmentation and Occlusion , 2007, 17th International Conference on Artificial Reality and Telexistence (ICAT 2007).

[20]  Allen R. Hanson,et al.  Aging in place: fall detection and localization in a distributed smart camera network , 2007, ACM Multimedia.

[21]  Björn Schuller,et al.  Multi-Camera Person Tracking and Left Luggage Detection Applying Homographic Transformation , 2007 .

[22]  E. Giannaka,et al.  Exploiting virtual objects' attributes and avatar's behavior in DVEs partitioning , 2007 .

[23]  A. Bourke,et al.  Fall detection - Principles and Methods , 2007, 2007 29th Annual International Conference of the IEEE Engineering in Medicine and Biology Society.

[24]  A K Bourke,et al.  Evaluation of a threshold-based tri-axial accelerometer fall detection algorithm. , 2007, Gait & posture.

[25]  Rita Cucchiara,et al.  A multi‐camera vision system for fall detection and alarm generation , 2007, Expert Syst. J. Knowl. Eng..

[26]  Jean Meunier,et al.  Fall Detection from Human Shape and Motion History Using Video Surveillance , 2007, 21st International Conference on Advanced Information Networking and Applications Workshops (AINAW'07).

[27]  G. ÓLaighin,et al.  A proposal for the classification and evaluation of fall detectors Une proposition pour la classification et l'évaluation des détecteurs de chutes , 2008 .

[28]  Xinguo Yu Approaches and principles of fall detection for elderly and patient , 2008, HealthCom 2008 - 10th International Conference on e-health Networking, Applications and Services.

[29]  J. Meunier,et al.  Procrustes Shape Analysis for Fall Detection , 2008 .

[30]  Lionel Reveret,et al.  Fall detection using multiple cameras , 2008, 2008 30th Annual International Conference of the IEEE Engineering in Medicine and Biology Society.

[31]  Maarit Kangas,et al.  Comparison of low-complexity fall detection algorithms for body attached accelerometers. , 2008, Gait & posture.

[32]  J. Meunier,et al.  An intelligent videomonitoring system for fall detection at home: perceptions of elderly people , 2009, Journal of telemedicine and telecare.

[33]  James M. Keller,et al.  Linguistic summarization of video for fall detection using voxel person and fuzzy logic , 2009, Comput. Vis. Image Underst..