A YOLO-Based Traffic Counting System

Jia-Ping Lin, Min-Te Sun
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引用次数: 57

Abstract

Image recognition can be applied in many applications of Intelligent Transportation System. Through automated traffic flow counting, the traffic information can be presented effectively for a given area. After the existing image recognition model process the monitoring video, the coordinates of objects in each frame can be easily extracted. The extracted object coordinates are then filtered to obtain the required vehicle coordinates. To achieve the function of vehicle counting, it is necessary to identify the relationship of vehicles in different frames, i.e., whether or not they represent the same vehicle. Although the vehicle counting can be achieved by using the tracking algorithm, a short period of recognition failure may cause wrong tracking, which will lead to incorrect traffic counting. In this paper, we propose a system that utilizes the YOLO framework for traffic flow counting. The system architecture consists of three blocks, including the Detector that generates the bounding box of vehicles, the Buffer which stores coordinates of vehicles, and the Counter which is responsible for vehicle counting. The proposed system requires only to utilize simple distance calculations to achieve the purpose of vehicle counting. In addition, by adding checkpoints, the system is able to alleviate the consequence of false detection. The videos from different locations and angles are used to verify and analyze the correctness and overall efficiency of the proposed system, and the results indicate that our system achieves high counting accuracy under the environment with sufficient ambient light.
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基于yolo的流量计数系统
图像识别可以应用于智能交通系统的许多应用中。通过自动交通流量统计,可以有效地呈现给定区域的交通信息。现有的图像识别模型对监控视频进行处理后,可以很容易地提取出每一帧中物体的坐标。然后对提取的对象坐标进行过滤以获得所需的车辆坐标。为了实现车辆计数的功能,需要识别不同帧中的车辆之间的关系,即它们是否代表同一辆车。虽然使用跟踪算法可以实现车辆计数,但短时间的识别失败可能会导致错误的跟踪,从而导致错误的流量计数。在本文中,我们提出了一个利用YOLO框架进行交通流计数的系统。该系统架构由三个模块组成,包括生成车辆边界盒的检测器、存储车辆坐标的Buffer和负责车辆计数的Counter。所提出的系统只需要利用简单的距离计算来达到车辆计数的目的。此外,通过增加检查点,系统能够减轻错误检测的后果。利用不同位置和角度的视频对系统的正确性和整体效率进行了验证和分析,结果表明,在环境光照充足的环境下,系统实现了较高的计数精度。
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