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A HOG Feature and SVM Based Method for Forward Vehicle Detection with Single Camera

机译:基于HOG特征和基于SVM的单摄像头转向车辆检测方法

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Vehicle detection is very important for automotive safety driver assistance system. This paper focused on improving the performance of vehicle detection system with single camera and proposed a HOG feature and SVM Based method for forward vehicle detection. The shadow underneath vehicle is the most important feature, so it can be utilized to detect vehicle at daytime. The shadow was segmented accurately by using histogram analysis method. The initial candidates were generated by combining horizontal and vertical edge feature of shadow, and these initial candidates were further verified by using a vehicle classifier Based on the histogram of gradient and support vector machine. The experimental results show that the proposed method could be adapt to different illumination circumstances robustly and has a detection rate of 96.87 percent and a false rate of 2.77 percent under normal light condition.
机译:车辆检测对于汽车安全驾驶员辅助系统非常重要。 本文集中于提高单幅相机的车辆检测系统的性能,提出了一种基于猪特征和基于SVM的转发器检测方法。 车辆下方的阴影是最重要的特征,因此可以利用它在白天进行车辆。 通过使用直方图分析方法准确地分割阴影。 通过组合阴影的水平和垂直边缘特征来产生初始候选,并且通过基于梯度和支持向量机的直方图使用车辆分类器进一步验证这些初始候选。 实验结果表明,该方法可以鲁棒地适应不同的照明环境,并且在正常光线下,检出率为96.87%的误差为2.77%。

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