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Vehicle Detection Counting Algorithm Based on Background Subtraction Algorithm and SORT

机译:基于背景减法算法和排序的车辆检测计数算法

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At present, the deep neural network model is commonly used to detect the vehicle in the video, and the detection accuracy is relatively high. However, the neural network model requires high computing performance and high demand for network transmission bandwidth. In many cases, the edge computing device used is of small computing power, so the neural network model is not applicable. However, background subtraction algorithm is easy to realize because of its low requirement on hardware calculation force and fast and accurate detection speed. Using SORT algorithm to track with accurate detection results can improve the speed again and reduce the consumption of computing resources. Therefore, this paper proposes an algorithm that uses the background subtraction algorithm to detect the vehicles in the video, and then uses the SORT algorithm to track the detected vehicles. The vehicle counter will automatically count when the vehicle in the video passes the traffic flow counting line. The accuracy of traffic flow counting results in this paper is 88%, which proves the feasibility and effectiveness of vehicle detection counting method based on background subtraction algorithm and SORT.
机译:目前,深神经网络模型通常用于检测视频中的车辆,并且检测精度相对较高。然而,神经网络模型需要高计算性能和对网络传输带宽的高需求。在许多情况下,所使用的边缘计算设备具有小的计算能力,因此神经网络模型不适用。然而,由于对硬件计算力和快速准确的检测速度的要求,背景减法算法易于实现。使用分类算法跟踪准确检测结果可以再次提高速度并降低计算资源的消耗。因此,本文提出了一种算法,其使用背景减法算法检测视频中的车辆,然后使用排序算法跟踪检测到的车辆。当视频中的车辆通过交通流计数线时,车辆计数器将自动计数。本文交通流量计数结果的准确性为88%,这证明了基于背景减法算法和排序的车辆检测计数方法的可行性和有效性。

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