Title :
Detecting abnormal gait
Author :
Bauckhage, Christian ; Tsotsos, John K. ; Bunn, Frank E.
Author_Institution :
Centre for Vision Res., York Univ., Toronto, Ont., Canada
Abstract :
Analyzing human gait has become popular in computer vision. So far, however, contributions to this topic almost exclusively considered the problem of person identification. In this paper, we view gait analysis from a different angle and shall examine its use as a means to deduce the physical condition of people. Understanding the detection of unusual movement patterns as a two class problem leads to the idea of using support vector machines for classification. We thus present a homeomorphisms between 2D lattices and binary shapes that provides a robust vector space embedding of body silhouettes. Experimental results underline that feature vectors obtained from this scheme are well suited to detect abnormal gait wavering, faltering, and falling can be detected reliably across individuals without tracking or recognizing limbs or body parts.
Keywords :
computer vision; gait analysis; image recognition; object detection; pattern classification; support vector machines; 2D lattices; abnormal gait detection; abnormal gait falling; abnormal gait faltering; abnormal gait wavering; binary shapes; body part recognition; body silhouettes; computer vision; feature vectors; homeomorphisms; human gait analysis; limb recognition; person identification; robust vector space; support vector machines; unusual movement pattern detection; Cameras; Computer vision; Humans; Legged locomotion; Optical computing; Robot vision systems; Robustness; Shape; Support vector machine classification; Support vector machines;
Conference_Titel :
Computer and Robot Vision, 2005. Proceedings. The 2nd Canadian Conference on
Print_ISBN :
0-7695-2319-6
DOI :
10.1109/CRV.2005.32