Background compensation and an active-camera motion tracking algorithm

R. Gupta, M. Theys, H. Siegel
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引用次数: 6

Abstract

Motion tracking using an active camera is a very computationally complex problem. Existing serial algorithms have provided frame rates that are much lower than those desired, mainly because of the lack of computational resources. Parallel computers are well suited to image processing tasks and can provide the computational power that is required for real-time motion tracking algorithms. This paper develops a parallel implementation of a known serial motion tracking algorithm, with the goal of achieving greater than real-time frame rates, and to study the effects of data layout, choice of parallel mode of execution, and machine size on the execution time of this algorithm. A distinguishing feature of this application study is that the portion of each image frame that is relevant changes from one frame to the next based on the camera motion. This impacts the effect of the chosen data layout on the needed inter-processor data transfers and the way in which work is distributed among the processors. Experiments were performed to determine for which image sizes and number of processors which data layout would perform better. The parallel computers used in this study are the MasPar MP-1, Intel Paragon, and PASM. Different modes are examined and it is determined that mixed mode is faster than SIMD or MIMD implementations.
背景补偿和有源摄像机运动跟踪算法
利用有源摄像机进行运动跟踪是一个计算非常复杂的问题。现有的串行算法提供的帧率比期望的要低得多,主要是因为缺乏计算资源。并行计算机非常适合图像处理任务,并且可以提供实时运动跟踪算法所需的计算能力。本文以实现大于实时的帧率为目标,开发了一种已知串行运动跟踪算法的并行实现,并研究了数据布局、并行执行方式的选择和机器大小对该算法执行时间的影响。本应用研究的一个显著特征是,每个图像帧中相关的部分根据摄像机的运动从一帧到下一帧发生变化。这将影响所选数据布局对所需的处理器间数据传输的影响,以及在处理器之间分配工作的方式。通过实验来确定哪种图像大小和处理器数量的数据布局效果更好。本研究使用的并行计算机是MasPar MP-1、Intel Paragon和PASM。研究了不同的模式,并确定混合模式比SIMD或MIMD实现更快。
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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