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Real-Time Multiobject Tracking Based on Multiway Concurrency

机译:基于多道同时发流的实时多机测跟踪

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摘要

This paper explored a pragmatic approach to research the real-time performance of a multiway concurrent multiobject tracking (MOT) system. At present, most research has focused on the tracking of single-image sequences, but in practical applications, multiway video streams need to be processed in parallel by MOT systems. There have been few studies on the real-time performance of multiway concurrent MOT systems. In this paper, we proposed a new MOT framework to solve multiway concurrency scenario based on a tracking-by-detection (TBD) model. The new framework mainly focuses on concurrency and real-time based on limited computing and storage resources, while considering the algorithm performance. For the former, three aspects were studied: (1) Expanded width and depth of tracking-by-detection model. In terms of width, the MOT system can support the process of multiway video sequence at the same time; in terms of depth, image collectors and bounding box collectors were introduced to support batch processing. (2) Considering the real-time performance and multiway concurrency ability, we proposed one kind of real-time MOT algorithm based on directly driven detection. (3) Optimization of system level—we also utilized the inference optimization features of NVIDIA TensorRT to accelerate the deep neural network (DNN) in the tracking algorithm. To trade off the performance of the algorithm, a negative sample (false detection sample) filter was designed to ensure tracking accuracy. Meanwhile, the factors that affect the system real-time performance and concurrency were studied. The experiment results showed that our method has a good performance in processing multiple concurrent real-time video streams.
机译:本文探讨了研究多道同时多机测跟踪(MOT)系统的实时性能的务实方法。目前,大多数研究专注于跟踪单图像序列,但在实际应用中,需要由MOT系统并行处理多道视频流。有关多道同时MOT系统的实时性能几乎没有研究。在本文中,我们提出了一种新的MOT框架,用于根据逐个检测(TBD)模型来解决多道同时发流场景。新框架主要关注基于有限的计算和存储资源的并发性和实时,同时考虑算法性能。对于前者,研究了三个方面:(1)膨胀宽度和逐个检测模型的深度。在宽度方面,MOT系统可以同时支持多道视频序列的过程;在深度方面,引入了图像收集器和边界箱收集器以支持批处理。 (2)考虑到实时性能和多道并发能力,我们提出了一种基于直接驱动检测的一种实时MOT算法。 (3)系统级优化 - 我们还利用了NVIDIA TensorR的推理优化特征,以加速跟踪算法中的深神经网络(DNN)。为了缩减算法的性能,设计了负样品(假检测样品)滤波器,以确保跟踪精度。同时,研究了影响系统实时性能和并发性的因素。实验结果表明,我们的方法在处理多个并发实时视频流方面具有良好的性能。

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