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Hardware design and analysis of efficient loop coarsening and border handling for image processing

机译:用于图像处理的有效循环粗化和边界处理的硬件设计和分析

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Field Programmable Gate Arrays (FPGAs) excel at the implementation of local operators in terms of throughput per energy since the off-chip communication can be reduced with an application-specific on-chip memory configuration. Furthermore, data-level parallelism can efficiently be exploited through socalled loop coarsening, which processes multiple horizontal pixels simultaneously. Moreover, existing solutions for proper border handling in hardware show considerable resource overheads. In this paper, we first propose novel architectures for image border handling and loop coarsening, which can significantly reduce area. Second, we present a systematic analysis of these architectures including the formulation of analytical models for their area usage. Based on these models, we provide an algorithm for suggesting the most efficient hardware architecture for a given specification. Finally, we evaluate several implementations of our proposed architectures obtained through Vivado High-Level Synthesis (HLS). The synthesis results show that the proposed coarsening architecture uses 32% less registers for a 5-by-5 convolution with a 64 coarsening factor compared to previous works, whereas the proposed border handling architectures facilitate a decrease in the Look-up Table (LUT) usage by 36 %.
机译:现场可编程门阵列(FPGA)在实现本地运营商方面的优势在于单位能量的吞吐量,因为可以通过特定于应用的片上存储器配置来减少片外通信。此外,可以通过所谓的循环粗化有效地利用数据级并行性,该循环粗化同时处理多个水平像素。此外,用于硬件中适当边界处理的现有解决方案显示出相当大的资源开销。在本文中,我们首先提出了用于图像边界处理和循环粗化的新颖体系结构,可以显着减小面积。其次,我们对这些体系结构进行了系统分析,包括针对其区域使用情况制定了分析模型。基于这些模型,我们提供了一种算法,用于建议给定规格的最有效的硬件体系结构。最后,我们评估了通过Vivado高级综合(HLS)获得的拟议架构的几种实现。综合结果表明,与以前的工作相比,提出的粗化架构使用5×5的卷积减少了32%的寄存器,具有64的粗化因子,而提出的边界处理架构促进了查找表(LUT)的减少)的使用量减少了36 \%。

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