A novel video detection design based on modified adaboost algorithm and HSV model

Xiao Luo, Huatao Zhao, H. Ogai, Chen Zhu
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引用次数: 1

Abstract

In modern traffic systems, accurate video detection is a key challenge for traffic management. Aiming at the problem of public bus detection, this paper proposes a video detection method to well recognize the buses. Firstly, we employ the foreground detection method to find the moving vehicles. And then a training classifier which consists of the improved Adaboost algorithm and Haar-like features is proposed to filter undesired vehicles. Secondly, we use the Canny operator to locate bus characteristics, and further detect the bus with the modified HSV model. This design is tested on the Visual Stadio and OpenCV platform in which load the urban transport data as the samples. The test results show that our detection method has better robustness than both three-frame differential method and hybrid Gaussian method, and the accuracy of detection on the window positioning is more than 93 percent.
基于改进adaboost算法和HSV模型的视频检测设计
在现代交通系统中,准确的视频检测是交通管理面临的关键挑战。针对公交车检测问题,提出了一种视频检测公交车的方法。首先,采用前景检测方法寻找运动车辆。然后提出了一种由改进Adaboost算法和haar类特征组成的训练分类器来过滤不需要的车辆。其次,利用Canny算子定位母线特征,利用改进的HSV模型对母线进行进一步检测。本设计在Visual Stadio和OpenCV平台上进行了测试,并加载了城市交通数据作为样本。实验结果表明,该检测方法比三帧差分法和混合高斯法具有更好的鲁棒性,对窗口定位的检测准确率达到93%以上。
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