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Analyzing the Energy-Efficiency of Vision Kernels on Embedded CPU, GPU and FPGA Platforms

机译:分析嵌入式CPU,GPU和FPGA平台上视觉核的能效

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This paper presents a benchmark of the energy efficiency of a wide range of vision kernels on three commonly used hardware accelerators for embedded vision applications: ARM57 CPU, Jetson TX2 GPU and ZCU102 FPGA, using their vendor optimized vision libraries: OpenCV, VisionWorks and xfOpenCV. Our results show that the GPU achieves an energy/frame reduction ratio of 1.1-3.2× compared to CPU and FPGA for simple kernels. While for more complicated kernels, the FPGA outperforms the others with energy/frame reduction ratios of 1.2-22.3×. It is also observed that the FPGA performs increasingly better as a vision kernel's complexity grows.
机译:本文在三个常用的硬件加速器上提供了用于嵌入式视觉应用的三种常见硬件加速器的能效的基准:ARM57 CPU,Jetson TX2 GPU和ZCU102 FPGA,使用其供应商优化的视觉库:OpenCV,VisionWorks和XfoPenCV。我们的研究结果表明,与CPU和FPGA为简单的内核相比,GPU实现了1.1-3.2×的能量/帧减小率。虽然对于更复杂的内核,但FPGA优于其他1.2-22.3×的能量/帧减少比率。还观察到,由于视觉核的复杂性增长,FPGA表现越来越好。

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