利用随机计算实现数字图像处理算法

Peng Li, D. Lilja
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引用次数: 145

摘要

随着器件规模不断扩大到纳米级,电路的可靠性将继续成为一个更大的问题。随机计算使用随机比特(随机比特流)进行计算,可以使用那些不可靠的设备实现可靠的计算。然而,随机计算的一个主要问题是,用这种技术实现的应用程序受到可用计算元素的限制。本文首先介绍并证明了一个随机绝对值函数。其次,我们将演示随机tanh函数的数学分析,这是随机比较器中使用的关键组件。第三,我们将给出一个单参数线性增益函数的定量分析,并提出一个新的双参数版本。通过四种基本的数字图像处理算法:边缘检测、基于帧差的图像分割、基于中值滤波的降噪和图像对比度拉伸,证明了随机计算元素的有效性。我们的实验结果表明,随机实现比传统实现容忍更多的噪声和消耗更少的硬件。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Using stochastic computing to implement digital image processing algorithms
As device scaling continues to nanoscale dimensions, circuit reliability will continue to become an ever greater problem. Stochastic computing, which performs computing with random bits (stochastic bits streams), can be used to enable reliable computation using those unreliable devices. However, one of the major issues of stochastic computing is that applications implemented with this technique are limited by the available computational elements. In this paper, first we will introduce and prove a stochastic absolute value function. Second, we will demonstrate a mathematical analysis of a stochastic tanh function, which is a key component used in a stochastic comparator. Third, we will present a quantitative analysis of a one-parameter linear gain function, and propose a new two-parameter version. The validity of the present stochastic computational elements is demonstrated through four basic digital image processing algorithms: edge detection, frame difference based image segmentation, median filter based noise reduction, and image contrast stretching. Our experimental results show that stochastic implementations tolerate more noise and consume less hardware than their conventional counterparts.
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