Vehicle detection based on underneath vehicle shadow using edge features

S. A. Nur, M. M. Ibrahim, N. M. Ali, Fatin Izzati Y. Nur
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引用次数: 22

Abstract

This paper proposes a computer vision vehicle detection algorithm. The main focus of this proposed algorithm, in which the vehicle is detected based on dynamic traffic scenes. The scene can be recorded using on-board camera that fixed in position to monitor the front traffic. The method that proposed in this vehicle detection algorithm is based on underneath vehicle shadows. The shadows underneath vehicle have a higher intensity compared to the background and road area which advantageous as the main feature for detection. To achieve low computational complexity, the edges feature is detected using a horizontal Sobel operator, which is enhanced by using Scharr operator. Together with blob analysis to detect the wanted features and bounding box is used to label the vehicle detected in the final detection. The algorithm test result shows that the method is effective in the vehicle detection and display a highly accurate result.
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基于车辆阴影下边缘特征的车辆检测
本文提出了一种计算机视觉车辆检测算法。该算法的主要重点是基于动态交通场景对车辆进行检测。可以使用固定位置的车载摄像头记录现场,以监控前方交通。该算法提出的车辆检测方法是基于车辆的下阴影。与背景和道路区域相比,车辆下方的阴影具有更高的强度,这有利于作为检测的主要特征。为了降低计算复杂度,使用水平Sobel算子检测边缘特征,并使用Scharr算子增强边缘特征。结合blob分析来检测需要的特征,并用边界框对最终检测到的车辆进行标记。算法测试结果表明,该方法在车辆检测中是有效的,显示出较高的准确率。
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