Discriminative training of patch-based models using joint boosting for occupant classification

Shih Shinh Huang*, Pei Yung Hsiao

*此作品的通信作者

研究成果: 圖書/報告稿件的類型會議稿件同行評審

1 引文 斯高帕斯(Scopus)

摘要

This paper presents a vision-based occupant classification method which is essential for developing a system that can intelligently decide when to turn on airbags based on vehicle occupancy. To circumvent intra-class variance, this work considers the empty class as a reference and describes the occupant class by using appearance difference. Context contrast histogram is used to represent the patch appearance. Each class is modelled using a set of locally representative parts called patches that alleviate the mis-classification problem resulting from severe lighting change. The selection and estimating the parameters of the patches are learned through joint boosting by minimizing training error. Experimental results from many videos from a camera deployed on a moving platform demonstrate the effectiveness of the proposed approach.

原文英語
主出版物標題IET Conference on Image Processing, IPR 2012
版本600 CP
DOIs
出版狀態已出版 - 2012
對外發佈
事件IET Conference on Image Processing, IPR 2012 - London, 英國
持續時間: 03 07 201204 07 2012

出版系列

名字IET Conference Publications
號碼600 CP
2012

Conference

ConferenceIET Conference on Image Processing, IPR 2012
國家/地區英國
城市London
期間03/07/1204/07/12

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