等级顺序和堆栈过滤器的并行处理架构

L. Lucke, K. Parhi
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引用次数: 5

摘要

为了在秩序和堆栈滤波器架构中实现额外的加速,需要使用并行处理技术,如流水线和块处理。流水线是很容易理解的,但是很少有块架构被开发出来用于秩序和堆栈过滤。当架构达到由底层技术引起的吞吐量限制时,块处理是必不可少的。一个平凡的块结构重复一个单输入、单输出结构来生成一个多输入、多输出结构,并且可以实现与块大小(或多个输出数量)相等的加速。与线性滤波器不同,秩顺序和堆栈滤波器输出是使用比较计算的。可以在块结构中共享这些比较。作者介绍了一种将块处理应用于秩序和堆栈滤波器的系统方法。该方法利用块结构内部的共享比较,生成具有共享子结构的块滤波器,降低了复杂度。此外,块处理对于产生低功耗设计非常重要。平凡的块结构在一定限度内产生低功耗设计。作者演示了如何使用具有共享子结构的块结构来生成任意低功耗的设计。>
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Parallel processing architectures for rank order and stack filters
To achieve additional speedup in rank order and stack filter architectures requires the use of parallel processing techniques such as pipelining and block processing. Pipelining is well understood but few block architectures have been developed for rank order and stack filtering. Block processing is essential when the architecture reaches the throughput limits caused by the underlying technology. A trivial block structure repeats a single input, single output structure to generate a multiple input, multiple output structure and can achieve speedups equal to the block size (or the number of multiple outputs). Unlike linear filters, the rank order and stack filter outputs are calculated using comparisons. It is possible to share these comparisons within the block structure. The authors introduce a systematic method for applying block processing to the rank order and stack filters. This method takes advantage of shared comparisons within the block structure to generate a block filter with shared substructures whose complexity is reduced. Furthermore, block processing is important for the generation of low power designs. Trivial block structures generate low power designs up to a certain limit. The authors demonstrate how block structures with shared substructures are used to generate designs with arbitrarily low power. >
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