一种异构智能摄像头架构的高能效数据流设计

Deepayan Bhowmik, Paulo Garcia, A. Wallace, Robert J. Stewart, G. Michaelson
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引用次数: 5

摘要

视觉注意建模通过描述场景特征来分割视觉感兴趣的区域,并且越来越多地被用作许多计算机视觉应用的预处理步骤,包括监视和安全。智能摄像头架构是一项新兴技术,是现代视觉系统中安全框架的基础。本文针对异构CPU+FPGA平台,提出了一种基于视觉显著性的摄像机架构数据流设计,提出了一种智能摄像机网络基础架构。提出的设计流程包括图像处理算法实现、软硬件集成和通过统一模型实现网络连接。通过利用数据流范式的属性,我们迭代地将算法规范细化为可部署的解决方案,解决每个设计阶段的不同需求:从算法准确性到硬件-软件交互、实时执行和功耗。我们的设计实现了实时运行时性能,优化的异步设计的功耗仅为0.25瓦。Xilinx Zynq平台上的资源使用仍然非常低。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Power efficient dataflow design for a heterogeneous smart camera architecture
Visual attention modelling characterises the scene to segment regions of visual interest and is increasingly being used as a pre-processing step in many computer vision applications including surveillance and security. Smart camera architectures are an emerging technology and a foundation of security and safety frameworks in modern vision systems. In this paper, we present a dataflow design of a visual saliency based camera architecture targeting a heterogeneous CPU+FPGA platform to propose a smart camera network infrastructure. The proposed design flow encompasses image processing algorithm implementation, hardware & software integration and network connectivity through a unified model. By leveraging the properties of the dataflow paradigm, we iteratively refine the algorithm specification into a deployable solution, addressing distinct requirements at each design stage: from algorithm accuracy to hardware-software interactions, real-time execution and power consumption. Our design achieved real-time run time performance and the power consumption of the optimised asynchronous design is reported at only 0.25 Watt. The resource usages on a Xilinx Zynq platform remains significantly low.
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