位平面图像编码的微观并行策略

F. Aulí-Llinàs, P. Enfedaque, J. Moure, Ian Blanes, Victor Sanchez
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引用次数: 6

摘要

近年来,一种新型处理器的兴起强烈依赖于单指令,多数据(SIMD)架构原则。SIMD计算背后的主要思想是并行和同步地将指令流应用于多个数据块。这允许并行执行数千个操作,实现比传统的多指令多数据(MIMD)架构更高的计算性能。SIMD计算所需的并行性水平只能在图像编码系统中通过并行编码多个系数的微观并行策略来实现。到目前为止,在位平面编码引擎中实现微观并行的唯一方法是并行执行多个编码通道。这种策略不太适合SIMD计算,因为每个线程执行不同的指令。本文介绍了为满足SIMD计算所需的细粒度并行性而设计的第一比特平面编码引擎。它的主要目的是允许在一次编码过程中进行并行系数处理。实验测试表明,编码性能与JPEG2000相当。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Strategy of Microscopic Parallelism for Bitplane Image Coding
Recent years have seen the upraising of a new type of processors strongly relying on the Single Instruction, Multiple Data (SIMD) architectural principle. The main idea behind SIMD computing is to apply a flow of instructions to multiple pieces of data in parallel and synchronously. This permits the execution of thousands of operations in parallel, achieving higher computational performance than with traditional Multiple Instruction, Multiple Data (MIMD) architectures. The level of parallelism required in SIMD computing can only be achieved in image coding systems via microscopic parallel strategies that code multiple coefficients in parallel. Until now, the only way to achieve microscopic parallelism in bit plane coding engines was by executing multiple coding passes in parallel. Such a strategy does not suit well SIMD computing because each thread executes different instructions. This paper introduces the first bit plane coding engine devised for the fine grain of parallelism required in SIMD computing. Its main insight is to allow parallel coefficient processing in a coding pass. Experimental tests show coding performance results similar to those of JPEG2000.
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