一种低功耗实时背景减法的高效架构解决方案

H. Tabkhi, Majid Sabbagh, G. Schirner
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引用次数: 5

摘要

嵌入式视觉是一个快速增长的市场,有许多具有挑战性的算法。在视觉算法中,混合高斯(MoG)背景减法是一个经常使用的核心算法,涉及大量的计算和通信。为了满足MoG的高计算和通信需求,以最小的功耗允许其嵌入式部署,需要解决巨大的挑战。本文提出了一种定制的架构,以实现在全高清分辨率下运行的MoG背景减法的节能。我们的设计过程受益于系统级设计原则。sldl捕获的规范(高级探索的结果)作为体系结构实现和手工制作的RTL设计的规范。为了优化该体系结构,本文采用了一系列优化技术,包括并行度提取、算法调优、操作宽度调整和深度流水线。最终的MoG实现由77个流水线阶段组成,在Zynq-7000 SoC上实现,工作频率为148.5 MHz。此外,我们的背景减法解决方案非常灵活,允许最终用户根据场景复杂性调整算法参数。我们的研究结果表明,在室内和室外场景中,芯片上功耗为145 mW,比ARM Cortex A9内核上的软件执行速度快600倍以上,效率非常高。
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An efficient architecture solution for low-power real-time background subtraction
Embedded vision is a rapidly growing market with a host of challenging algorithms. Among vision algorithms, Mixture of Gaussian (MoG) background subtraction is a frequently used kernel involving massive computation and communication. Tremendous challenges need to be reolved to provide MoG's high computation and communication demands with minimal power consumption allowing its embedded deployment. This paper proposes a customized architecture for power-efficient realization of MoG background subtraction operating at Full-HD resolution. Our design process benefits from system-level design principles. An SLDL-captured specification (result of high-level explorations) serves as a specification for architecture realization and hand-crafted RTL design. To optimize the architecture, this paper employs a set of optimization techniques including parallelism extraction, algorithm tuning, operation width sizing and deep pipelining. The final MoG implementation consists of 77 pipeline stages operating at 148.5 MHz implemented on a Zynq-7000 SoC. Furthermore, our background subtraction solution is flexible allowing end users to adjust algorithm parameters according to scene complexity. Our results demonstrate a very high efficiency for both indoor and outdoor scenes with 145 mW on-chip power consumption and more than 600× speedup over software execution on ARM Cortex A9 core.
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