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Vehicle detection from static images in unrestricted scenes using deep convolutional neural network
Yan, Zhuo1,2; Cheng, Cheng1; Xie, Yi1; Fu, Jianting1,2; Cheng, Peng2; Shi, Yu1; Zhou, Xiangdong1,3; Yuan, Jiahu1
2017
摘要

Most of the traditional methods, which extract manual feature from data, are based on the particular scene or video source. In this paper, we propose a vehicle detection method that targets to the static images in unrestricted scenes. Firstly, we measure similarities of all initialization regions and merge them by some rules to get bounding boxes. Then the features of these bounding boxes are extracted by deep convolutional neural network (D-CNN) respectively. Finally, Lib-SVM classifier is employed to classify each bounding box and to complete vehicle detection. Compared with traditional method, the proposed strategy performs stronger robustness.

语种英语
会议(录)名称2017 7th International Workshop on Computer Science and Engineering, WCSE 2017
页码267-271
收录类别EI
会议地点No. 38 A, Xueqing Road, Haidian District, Beijing, China
会议日期June 25, 2017 - June 27, 2017