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Study on the Moving Target Tracking Based on Vision DSP

机译:基于视觉DSP的移动目标跟踪研究

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摘要

The embedded visual tracking system has higher requirements for real-time performance and system resources, and this is a challenge for visual tracking systems with available hardware resources. The major focus of this study is evaluating the results of hardware optimization methods. These optimization techniques provide efficient utilization based on limited hardware resources. This paper also uses a pragmatic approach to investigate the real-time performance effect by implementing and optimizing a kernel correlation filter (KCF) tracking algorithm based on a vision digital signal processor (vision DSP). We examine and analyze the impact factors of the tracking system, which include DP (data parallelism), IP (instruction parallelism), and the characteristics of parallel processing of the DSP core and iDMA (integrated direct memory access). Moreover, we utilize a time-sharing strategy to increase the system runtime speed. These research results are also applicable to other machine vision algorithms. In addition, we introduced a scale filter to overcome the disadvantages of KCF for scale transformation. The experimental results demonstrate that the use of system resources and real-time tracking speed also satisfies the expected requirements, and the tracking algorithm with a scale filter can realize almost the same accuracy as the DSST (discriminative scale space tracking) algorithm under a vision DSP environment.
机译:嵌入式视觉跟踪系统对实时性能和系统资源的要求具有更高的要求,这是具有可用硬件资源的可视跟踪系统的挑战。本研究的主要重点是评估硬件优化方法的结果。这些优化技术基于有限的硬件资源提供有效的利用率。本文还采用了一种务实的方法来研究和优化基于视觉数字信号处理器(Vision DSP)的内核相关滤波器(KCF)跟踪算法来研究实时性能效果。我们检查和分析跟踪系统的影响因子,包括DP(数据并行性),IP(指令并行性)和DSP核心和idma的并行处理的特性(集成直接存储器访问)。此外,我们利用时间分享策略来提高系统运行时速度。这些研究结果也适用于其他机器视觉算法。此外,我们介绍了一种尺度过滤器,以克服KCF的尺度转换的缺点。实验结果表明,使用系统资源和实时跟踪速度也满足预期的要求,并且具有比例滤波器的跟踪算法可以实现几乎与视觉DSP下的DSST(鉴别尺度空间跟踪)算法相同的准确度环境。

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