TY - GEN
T1 - Occupant classification for smart airbag using Bayesian filtering
AU - Huang, Shih Shinh
AU - Hsiao, Pei Yung
PY - 2010
Y1 - 2010
N2 - Occupant classification is essential for developing a smart airbag system that can intelligently decide to either turn off or deploy according to the type of the occupants. This paper presents a probabilistic approach to recognize the occupant type from a video sequence. Instead of assuming that the frames are mutually independent, we take the relation between two consecutive frames into consideration. Thus, the problem of occupant classification is formulated by introducing the Bayesian filtering which imposes both transition and measurement terms for the inference of the occupant class. For evaluating measurement term, the higher-order Tchebichef moments of edge maps is computed and then an Adaboost learning algorithm is applied to select a set of discriminative moments as the features. For incorporating the temporal coherence, a finite state machine is used to model the transition probabilities among the occupant classes. Finally, the occupant type is estimated by maximizing the posterior probability. Experimental results for several videos with illumination variation are provided to validate the proposed approach.
AB - Occupant classification is essential for developing a smart airbag system that can intelligently decide to either turn off or deploy according to the type of the occupants. This paper presents a probabilistic approach to recognize the occupant type from a video sequence. Instead of assuming that the frames are mutually independent, we take the relation between two consecutive frames into consideration. Thus, the problem of occupant classification is formulated by introducing the Bayesian filtering which imposes both transition and measurement terms for the inference of the occupant class. For evaluating measurement term, the higher-order Tchebichef moments of edge maps is computed and then an Adaboost learning algorithm is applied to select a set of discriminative moments as the features. For incorporating the temporal coherence, a finite state machine is used to model the transition probabilities among the occupant classes. Finally, the occupant type is estimated by maximizing the posterior probability. Experimental results for several videos with illumination variation are provided to validate the proposed approach.
UR - http://www.scopus.com/inward/record.url?scp=77956607040&partnerID=8YFLogxK
U2 - 10.1109/ICGCS.2010.5542979
DO - 10.1109/ICGCS.2010.5542979
M3 - 会议稿件
AN - SCOPUS:77956607040
SN - 9781424468775
T3 - 1st International Conference on Green Circuits and Systems, ICGCS 2010
SP - 660
EP - 665
BT - 1st International Conference on Green Circuits and Systems, ICGCS 2010
T2 - 1st International Conference on Green Circuits and Systems, ICGCS 2010
Y2 - 21 June 2010 through 23 June 2010
ER -