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- Title
Fast Pedestrian Recognition Based on Multisensor Fusion.
- Authors
Hongyu Hu; Zhaowei Qu; Zhihui Li; Jinhui Hu; Fulu Wei
- Abstract
A fast pedestrian recognition algorithm based on multisensor fusion is presented in this paper. Firstly, potential pedestrian locations are estimated by laser radar scanning in the world coordinates, and then their corresponding candidate regions in the image are located by camera calibration and the perspective mapping model. For avoiding time consuming in the training and recognition process caused by large numbers of feature vector dimensions, region of interest-based integral histograms of oriented gradients (ROI-IHOG) feature extraction method is proposed later. A support vector machine (SVM) classifier is trained by a novel pedestrian sample dataset which adapt to the urban road environment for online recognition. Finally, we test the validity of the proposed approach with several video sequences from realistic urban road scenarios. Reliable and timewise performances are shown based on our multisensor fusing method.
- Subjects
TRAFFIC engineering; MULTISENSOR data fusion; SUPPORT vector machines; CITY traffic; OPTICAL radar; RADAR antennas; FEATURE extraction
- Publication
Discrete Dynamics in Nature & Society, 2012, p1
- ISSN
1026-0226
- Publication type
Article
- DOI
10.1155/2012/318305