会议专题

OBJECT RECOGNITION USING MULTI-VIEW IMAGING

Difficult situations such as high noise or low resolution can seriously degrade the performance of object recognition algorithms that operate on isolated images.We show that recognition performance may be improved substantially in such cases by fusing the information available from a sequence of multi-view images.In this paper we present two algorithms for object recognition based on SIFT feature points.The first operates on single images and uses chirality constraints to reduce the recognition errors that arise when only a small number of feature points are matched.The procedure is extended in the second algorithm which operates on a multi-view image sequence and,by tracking feature points in the plenoptic domain,is able to fuse feature point matches from all the available images resulting in more robust recognition.

Object recognition multi-view images local interest features plenoptic function SIFT

Yizhou Wang Mike Brookes Pier Luigi Dragotti

Communications and Signal Processing Group,Electrical and Electronic Engineering Department Imperial College London,Exhibition Road,London SW7 2AZ,England

国际会议

9th International Conference on Signal Processing(第九届国际信号处理学术会议)(ICSP08)

北京

英文

2008-10-26(万方平台首次上网日期,不代表论文的发表时间)