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基于图像处理的夜视车辆检测
引用本文:陈柏生. 基于图像处理的夜视车辆检测[J]. 微型机与应用, 2012, 31(5): 36-38,41
作者姓名:陈柏生
作者单位:华侨大学计算机学院,福建泉州,362021
摘    要:根据环境照度将夜间交通场景区分为充足照明和低照度两种情况,分别设计相应的处理流程检测运动车辆。针对充足照明的情况,先使用梯度滤波消除路面反光的干扰,再进行帧间差分检测运动区域,最后使用级联形态学滤波消除噪声点和填充帧间差分方法导致的车体区域空洞。针对低照度情况,引入先验知识检测车前灯,并利用车灯间距判别车型大小,最后结合车辆的造型知识定位车体。对多段典型的夜间交通场景视频进行了测试,实验结果表明,该方法能够有效地检测夜间行驶车辆。

关 键 词:交通监控  计算机视觉  梯度滤波  先验知识

Night vision vehicle detection based on image processing
Chen Baisheng. Night vision vehicle detection based on image processing[J]. Microcomputer & its Applications, 2012, 31(5): 36-38,41
Authors:Chen Baisheng
Affiliation:Chen Baisheng (Department of Computer Science & Technology ,National Huaqiao University ,Quanzhou 362021 ,China )
Abstract:Night traffic scenes are distinguished as two cases of good lighting and poor visibility according to the environment illumination. The corresponding strategies are schemed to deal with vehicle detection for each case. In the former case, a preprocessing based on grad-filtering is firstly employed to eliminate the influence of the reflection. Foregrounds are then detected by inter-frame differencing. Finally, a post-processing based on a cascaded morphological filter is exploited to exclude the noises and fill the holes resulting from the operator of inter-frame differencing. In the other case, a priori knowledge is introduced to detect vehicle headlights pairs, and vehicle body is located based on the knowledge of vehicle configuration. Experiments are done on several video sequences representing typical night traffic scene both in the two cases. Results show that the presented methodology is able to detect vehicles at night effectively.
Keywords:traffic surveillance  computer vision  grad-filtering  a priori knowledge
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