RT-MOT: Confidence-Aware Real-Time Scheduling Framework for Multi-Object Tracking Tasks

D. Kang, Seunghoon Lee, H. Chwa, Seung-Hwan Bae, Chang Mook Kang, Jinkyu Lee, Hyeongboo Baek
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引用次数: 1

Abstract

Different from existing MOT (Multi-Object Tracking) techniques that usually aim at improving tracking accuracy and average FPS, real-time systems such as autonomous vehicles necessitate new requirements of MOT under limited computing resources: (R1) guarantee of timely execution and (R2) high tracking accuracy. In this paper, we propose RT-MOT, a novel system design for multiple MOT tasks, which addresses R1 and R2. Focusing on multiple choices of a workload pair of detection and association, which are two main components of the tracking-by-detection approach for MOT, we tailor a measure of object confidence for RT-MOT and develop how to estimate the measure for the next frame of each MOT task. By utilizing the estimation, we make it possible to predict tracking accuracy variation according to different workload pairs to be applied to the next frame of an MOT task. Next, we develop a novel confidence-aware real-time scheduling framework, which offers an offline timing guarantee for a set of MOT tasks based on non-preemptive fixed-priority scheduling with the smallest workload pair. At run-time, the framework checks the feasibility of a priority-inversion associated with a larger workload pair, which does not compromise the timing guarantee of every task, and then chooses a feasible scenario that yields the largest tracking accuracy improvement based on the proposed prediction. Our experiment results demonstrate that RT-MOT significantly improves overall tracking accuracy by up to 1.5 ×, compared to existing popular tracking-by-detection approaches, while guaranteeing timely execution of all MOT tasks.
RT-MOT:多目标跟踪任务的信任感知实时调度框架
与现有的MOT (Multi-Object Tracking)技术通常以提高跟踪精度和平均FPS为目标不同,自动驾驶汽车等实时系统在有限的计算资源下对MOT提出了新的要求:(R1)保证及时执行,(R2)高跟踪精度。在本文中,我们提出了RT-MOT,一种针对R1和R2的多MOT任务的新系统设计。基于检测跟踪方法的两个主要组成部分——检测和关联工作负载对的多重选择,我们定制了RT-MOT的目标置信度度量,并开发了如何估计每个MOT任务的下一帧的度量。利用该估计,我们可以根据不同的工作负载对预测下一帧MOT任务的跟踪精度变化。其次,我们开发了一种新的具有置信度感知的实时调度框架,该框架以最小的工作负载对为一组基于非抢占固定优先级调度的MOT任务提供离线时间保证。在运行时,框架检查与更大的工作负载对关联的优先级反转的可行性,该可行性不影响每个任务的时间保证,然后根据提出的预测选择产生最大跟踪精度改进的可行场景。我们的实验结果表明,与现有流行的检测跟踪方法相比,RT-MOT显著提高了整体跟踪精度,最高可达1.5倍,同时保证了所有MOT任务的及时执行。
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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