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Vehicle Detection Based on Visual Saliency and Deep Sparse Convolution Hierarchical Model 被引量:4

Vehicle Detection Based on Visual Saliency and Deep Sparse Convolution Hierarchical Model
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摘要 Traditional vehicle detection algorithms use traverse search based vehicle candidate generation and hand crafted based classifier training for vehicle candidate verification.These types of methods generally have high processing times and low vehicle detection performance.To address this issue,a visual saliency and deep sparse convolution hierarchical model based vehicle detection algorithm is proposed.A visual saliency calculation is firstly used to generate a small vehicle candidate area.The vehicle candidate sub images are then loaded into a sparse deep convolution hierarchical model with an SVM-based classifier to perform the final detection.The experimental results demonstrate that the proposed method is with 94.81% correct rate and 0.78% false detection rate on the existing datasets and the real road pictures captured by our group,which outperforms the existing state-of-the-art algorithms.More importantly,high discriminative multi-scale features are generated by deep sparse convolution network which has broad application prospects in target recognition in the field of intelligent vehicle. Traditional vehicle detection algorithms use traverse search based vehicle candidate generation and hand crafted based classifier training for vehicle candidate verification.These types of methods generally have high processing times and low vehicle detection performance.To address this issue,a visual saliency and deep sparse convolution hierarchical model based vehicle detection algorithm is proposed.A visual saliency calculation is firstly used to generate a small vehicle candidate area.The vehicle candidate sub images are then loaded into a sparse deep convolution hierarchical model with an SVM-based classifier to perform the final detection.The experimental results demonstrate that the proposed method is with 94.81% correct rate and 0.78% false detection rate on the existing datasets and the real road pictures captured by our group,which outperforms the existing state-of-the-art algorithms.More importantly,high discriminative multi-scale features are generated by deep sparse convolution network which has broad application prospects in target recognition in the field of intelligent vehicle.
出处 《Chinese Journal of Mechanical Engineering》 SCIE EI CAS CSCD 2016年第4期765-772,共8页 中国机械工程学报(英文版)
基金 Supported by National Natural Science Foundation of China(Grant Nos.U1564201,61573171,61403172,51305167) China Postdoctoral Science Foundation(Grant Nos.2015T80511,2014M561592) Jiangsu Provincial Natural Science Foundation of China(Grant No.BK20140555) Six Talent Peaks Project of Jiangsu Province,China(Grant Nos.2015-JXQC-012,2014-DZXX-040) Jiangsu Postdoctoral Science Foundation,China(Grant No.1402097C) Jiangsu University Scientific Research Foundation for Senior Professionals,China(Grant No.14JDG028)
关键词 vehicle detection visual saliency deep model convolution neural network vehicle detection visual saliency deep model convolution neural network
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