误差扩散抖动的混合实现

A. Deshpande, Ishan Misra, P J Narayanan
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引用次数: 15

摘要

许多图像过滤操作提供了充足的并行性,但是由于长时间的、顺序的和非线性的数据依赖关系,图像的渐进非线性处理是最难并行化的。这种操作的一个典型例子是误差扩散抖动,以Floyd-Steinberg算法为例。在本文中,我们使用基于块的方法在多核cpu上进行并行化,并使用基于像素的方法在GPU上进行并行化。我们还提出了一种混合方法,其中CPU和GPU在计算过程中并行运行。传统上,高性能计算与高端cpu和gpu联系在一起。我们的重点是日常计算机,如笔记本电脑和台式电脑,其中GPU的计算能力和CPU一样强大。我们的实现可以在一台使用Nvidia 8600M GPU的现成笔记本电脑上抖动一张8K × 8K的图像,大约需要400毫秒,而在其CPU上串行实现大约需要4秒。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Hybrid implementation of error diffusion dithering
Many image filtering operations provide ample parallelism, but progressive non-linear processing of images is among the hardest to parallelize due to long, sequential, and non-linear data dependency. A typical example of such an operation is error diffusion dithering, exemplified by the Floyd-Steinberg algorithm. In this paper, we present its parallelization on multicore CPUs using a block-based approach and on the GPU using a pixel based approach. We also present a hybrid approach in which the CPU and the GPU operate in parallel during the computation. High Performance Computing has traditionally been associated with high end CPUs and GPUs. Our focus is on everyday computers such as laptops and desktops, where significant compute power is available on the GPU as on the CPU. Our implementation can dither an 8K × 8K image on an off-the-shelf laptop with an Nvidia 8600M GPU in about 400 milliseconds when the sequential implementation on its CPU took about 4 seconds.
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