Optimal FPGA memory allocation for image processing

Bengang Bao, Xiaoling Liang
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Abstract

In the field of computer vision, Field Programmable Gate Array (FGPA) limited de on-chip memory is difficult to meet the power, size and other requirements. To address this phenomenon, the study constructs a partitioning algorithm to achieve a balance between energy consumption and resource utilisation based on the analysis of memory resource allocation, overall power consumption and resource utilisation from the perspective of image processing technology. The power consumption of the balancing algorithm is lower compared to the optimised utilisation algorithm HLS tool, with both Block Ramdom Access Memory (BRAM) power consumption taking the value of 0.005; the dynamic power consumption takes the value range of 0.014–0.082. Compared to the High Level Synthesis (HLS) tool, the overall power consumption of the balancing algorithm and the optimised utilisation algorithm is significantly lower, with the values of 0.251 and 0.252 respectively, both with a reduction rate of approximately 30%. The accuracy rate of the proposed memory optimisation allocation algorithm is the highest among the four memory optimisation allocation algorithms and strategies on all three types of target scales. FPGA memory optimisation allocation strategy can guarantee to have lower power consumption while satisfying the same resource occupancy, and the model has in-depth application value in visual image vision technology.
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优化FPGA内存分配图像处理
在计算机视觉领域,现场可编程门阵列(FGPA)有限的片上存储器难以满足功耗、尺寸等要求。针对这一现象,本研究从图像处理技术的角度,在分析内存资源分配、整体功耗和资源利用率的基础上,构建了一种分区算法,实现能耗和资源利用率的平衡。与优化利用算法HLS工具相比,平衡算法的功耗较低,块随机存取存储器(BRAM)功耗均为0.005;动态功耗取值范围为0.014 ~ 0.082。与High Level Synthesis (HLS)工具相比,平衡算法和优化利用算法的总功耗显著降低,分别为0.251和0.252,降低率均约为30%。在所有三种类型的目标尺度上,所提出的内存优化分配算法的准确率是四种内存优化分配算法和策略中最高的。FPGA内存优化分配策略可以在满足相同资源占用的情况下保证较低的功耗,该模型在视觉图像视觉技术中具有深入的应用价值。
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