A constructing vehicle intrusion detection algorithm based on BOW presentation model

Jie Yuan, Weihua Cheng, Lingqing Sun, Yiqing Cheng
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引用次数: 3

Abstract

Existed algorithms to detect constructing vehicles intrusion in order to prevent power grid transmission line from damage by using video/image processing can only detect constructing vehicles in a single color. In this paper, a new algorithm to detect invasive constructing vehicles based on BOW presentation model is proposed. Firstly, Gaussian fuzzy operation is imposed on the image and Gaussian mixture modeling method is used to separate the foreground regions from background. Then dense SIFT features are extracted from the foreground regions and the features are quantified by using visual dictionary which have been studied previously. Next, the SVM classifier based on histogram intersection kernel function is applied for vehicle type recognition. Finally, duplicated vehicles are removed and alarming signal is sent to workers who need to deal with the hidden damage actions. The experimental results show that the proposed method can effectively detect large constructing vehicles of different colors and categories.
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一种基于BOW表示模型的车辆入侵检测算法
现有的基于视频/图像处理的施工车辆入侵检测算法只能检测单色施工车辆,以防止电网输电线损坏。本文提出了一种基于BOW表示模型的入侵建筑车辆检测算法。首先对图像进行高斯模糊处理,利用高斯混合建模方法分离前景和背景;然后从前景区域提取密集SIFT特征,并利用已有的视觉字典对特征进行量化。然后,将基于直方图交集核函数的SVM分类器应用于车型识别。最后,移除重复的车辆,并向需要处理隐藏损坏动作的工作人员发送报警信号。实验结果表明,该方法可以有效地检测出不同颜色和类别的大型建筑车辆。
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