Traffic Monitoring using an Object Detection Framework with Limited Dataset

V. Komašilovs, A. Zacepins, A. Kviesis, C. Estevez
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引用次数: 4

Abstract

Vehicle detection and tracking is one of the key components of the smart traffic concept. Modern city planning and development is not achievable without proper knowledge of existing traffic flows within the city. Surveillance video is an undervalued source of traffic information, which can be discovered by variety of information technology tools and solutions, including machine learning techniques. A solution for real-time vehicle traffic monitoring, tracking and counting is proposed in Jelgava city, Latvia. It uses object detection model for locating vehicles on the image from outdoor surveillance camera. Detected vehicles are passed to tracking module, which is responsible for building vehicle trajectory and its counting. This research compares two different model training approaches (uniform and diverse data sets) used for vehicle detection in variety of weather and day-time conditions. The system demonstrates good accuracy of given test cases (about 92% accuracy in average). In addition, results are compared to non-machine learning vehicle tracking approach, where notable vehicle detection accuracy increase is demonstrated on congested traffic. This research is fulfilled within the RETRACT (Enabling resilient urban transportation systems in smart cities) project.
基于有限数据集的目标检测框架的交通监控
车辆检测与跟踪是智能交通概念的关键组成部分之一。如果没有对城市现有交通流量的适当了解,现代城市规划和发展是无法实现的。监控视频是一种被低估的交通信息来源,可以通过各种信息技术工具和解决方案(包括机器学习技术)来发现。在拉脱维亚的耶尔加瓦市提出了一种实时车辆交通监控、跟踪和计数的解决方案。利用目标检测模型对室外监控摄像头采集的图像进行车辆定位。检测到的车辆被传递给跟踪模块,跟踪模块负责建立车辆轨迹并对其进行计数。本研究比较了两种不同的模型训练方法(统一数据集和不同数据集),用于各种天气和日间条件下的车辆检测。该系统对给定的测试用例显示了良好的准确性(平均准确率约为92%)。此外,将结果与非机器学习车辆跟踪方法进行了比较,在拥挤的交通中,车辆检测精度显着提高。这项研究是在RETRACT(在智能城市中实现弹性城市交通系统)项目中完成的。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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