Smart traffic engineering and intelligent transportation services are in increasing demand from governmental authorities to optimize traffic performance and thus reduce energy costs, increase the drivers' safety and comfort, ensure traffic laws enforcement, and detect traffic violations. In this paper, we address this challenge, and we leverage the use of Artificial Intelligence (AI) and Unmanned Aerial Vehicles (UAVs) to develop an AI-integrated video analytics framework, called TAU (Traffic Analysis from UAVs), for automated traffic analytics and understanding. Unlike previous works on traffic video analytics, we propose an automated object detection and tracking pipeline from video processing to advanced traffic understanding using high-resolution UAV images. TAU combines six main contributions. First, it proposes a pre-processing algorithm to adapt the high-resolution UAV image as input to the object detector without lowering the resolution. This ensures an excellent detection accuracy from high-quality features, particularly the small size of detected objects from UAV images. Second, it introduces an algorithm for recalibrating the vehicle coordinates to ensure that vehicles are uniquely identified and tracked across the multiple crops of the same frame. Third, it presents a speed calculation algorithm based on accumulating information from successive frames. Fourth, TAU counts the number of vehicles per traffic zone based on the Ray Tracing algorithm. Fifth, TAU has a fully independent algorithm for crossroad arbitration based on the data gathered from the different zones surrounding it. Sixth, TAU introduces a set of algorithms for extracting twenty-four types of insights from the raw data collected. The code is shared here: https://github.com/bilel-bj/TAU. Video demonstrations are provided here: https://youtu.be/wXJV0H7LviU and here: https://youtu.be/kGv0gmtVEbI.
翻译:智能交通工程和智能运输服务正在增加政府当局对优化交通绩效的需求,从而降低能源成本,提高司机的安全和舒适度,确保交通执法,并发现交通违规现象。在本文件中,我们应对这一挑战,并利用人工智能(AI)和无人驾驶航空飞行器(UAVs)开发一个AI-集成视频分析框架,称为TAU(UAVs的跟踪分析),用于自动交通分析与理解。与以前关于交通视频分析的工程不同,我们建议用高分辨率UAV图像自动检测和跟踪从视频处理到高级交通理解的管道。TAU将六项主要贡献结合起来。首先,我们提议采用预处理算法,将高分辨率UAVS(AI)图像作为目标检测器输入器,但不降低分辨率分辨率。这确保从高质量特征(特别是从UAVs这里检测到的小型物体。第二,我们提出对车辆校正校坐标的算算法,以确保车辆被单独识别和跟踪,从高清晰度(VAU)的多个作物,在TAVAV/电路段进行数据分析。在不断计算。</s>