基于快速编码器的实时鸟瞰多目标跟踪系统

Carlos Gómez Huélamo, Javier del Egido, L. Bergasa, R. Barea, M. Ocaña, J. F. Arango, Rodrigo Gutiérrez-Moreno
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引用次数: 7

摘要

提出了一种基于快速编码器的自动驾驶电动汽车实时鸟瞰多目标跟踪(MOT)系统管道,该管道基于快速编码器进行目标检测,并结合匈牙利算法和鸟瞰卡尔曼滤波器分别用于数据关联和状态估计。该系统能够360度分析自动驾驶汽车,并估计环境物体的未来轨迹,为自动驾驶架构的其他层(如控制或决策)提供必要的输入。首先,描述了我们的系统管道,合并了在线和实时DATMO(多目标检测和跟踪),ROS(机器人操作系统)和Docker的概念,以增强所提出的MOT系统在全自动驾驶架构中的集成。其次,使用最近提出的KITTI-3DMOT评估工具对系统管道进行验证,该工具展示了MOT系统的3D定位和跟踪的全部实力。最后,通过使用MOT基准测试中使用的主流指标和最近提出的积分MOT指标,评估跟踪系统在所有检测阈值上的性能,将我们的建议与其他最先进的方法进行性能比较。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Real-Time Bird’s Eye View Multi-Object Tracking system based on Fast Encoders for Object Detection
This paper presents a Real-Time Bird’s Eye View Multi Object Tracking (MOT) system pipeline for an Autonomous Electric car, based on Fast Encoders for object detection and a combination of Hungarian algorithm and Bird’s Eye View (BEV) Kalman Filter, respectively used for data association and state estimation. The system is able to analyze 360 degrees around the ego-vehicle as well as estimate the future trajectories of the environment objects, being the essential input for other layers of a self-driving architecture, such as the control or decision-making. First, our system pipeline is described, merging the concepts of online and real-time DATMO (Deteccion and Tracking of Multiple Objects), ROS (Robot Operating System) and Docker to enhance the integration of the proposed MOT system in fully-autonomous driving architectures. Second, the system pipeline is validated using the recently proposed KITTI-3DMOT evaluation tool that demonstrates the full strength of 3D localization and tracking of a MOT system. Finally, a comparison of our proposal with other state-of-the-art approaches is carried out in terms of performance by using the mainstream metrics used on MOT benchmarks and the recently proposed integral MOT metrics, evaluating the performance of the tracking system over all detection thresholds.
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