论文标题
使用动态模式分解和RES-UNET+神经网络的时空地图车辆轨迹检测
Spatial-Temporal Map Vehicle Trajectory Detection Using Dynamic Mode Decomposition and Res-UNet+ Neural Networks
论文作者
论文摘要
本文介绍了一种机器学习增强的纵向扫描线方法,用于从高角度交通摄像机中提取车辆轨迹。动态模式分解(DMD)方法用于通过将空间 - 周期映射(STMAP)分解到稀疏前景和低级背景中来提取车辆链。一个名为Res-Unet+的深神经网络是为语义细分任务而设计的,它是通过调整两个普遍的深度学习体系结构而设计的。 RES-UNET+神经网络显着提高了基于STMAP的车辆检测的性能,并且DMD模型提供了许多有趣的见解,以理解STMAP保留的基本时空结构的演变。将模型输出与先前的图像处理模型和主流语义分割深神经网络进行了比较。经过彻底的评估后,该模型被证明是针对许多具有挑战性的因素的准确和强大的。最后但并非最不重要的一点是,本文从根本上解决了NGSIM轨迹数据中发现的许多质量问题。已发布清洁的高质量轨迹数据,以支持有关交通流量和微观车辆控制的未来理论和建模研究。此方法是用于基于视频的轨迹提取的可靠解决方案,并且具有广泛的适用性。
This paper presents a machine-learning-enhanced longitudinal scanline method to extract vehicle trajectories from high-angle traffic cameras. The Dynamic Mode Decomposition (DMD) method is applied to extract vehicle strands by decomposing the Spatial-Temporal Map (STMap) into the sparse foreground and low-rank background. A deep neural network named Res-UNet+ was designed for the semantic segmentation task by adapting two prevalent deep learning architectures. The Res-UNet+ neural networks significantly improve the performance of the STMap-based vehicle detection, and the DMD model provides many interesting insights for understanding the evolution of underlying spatial-temporal structures preserved by STMap. The model outputs were compared with the previous image processing model and mainstream semantic segmentation deep neural networks. After a thorough evaluation, the model is proved to be accurate and robust against many challenging factors. Last but not least, this paper fundamentally addressed many quality issues found in NGSIM trajectory data. The cleaned high-quality trajectory data are published to support future theoretical and modeling research on traffic flow and microscopic vehicle control. This method is a reliable solution for video-based trajectory extraction and has wide applicability.