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SP-CNN: A Scalable and Programmable CNN-Based Accelerator

机译:SP-CNN:基于可扩展和可编程CNN的加速器

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摘要

Specialized accelerators have become prevalent in many mobile computing platforms for their ability to perform certain tasks, such as image processing, at a lower power cost than a generalized CPU or GPU. In this article, the authors focus on using cellular neural networks (CNNs) as a specialized accelerator. CNN is a neural computing paradigm that is well suited for image processing applications. However, hardware implementations were originally developed to handle only relatively small image sizes. The authors propose SP-CNN, an architecture and a multiplexing algorithm that provides scalability to CNN applications. The authors demonstrate the proposed multiplexing algorithms over a set of six image processing benchmarks and present a performance analysis of SP-CNN.
机译:专用加速器由于能够以比通用CPU或GPU更低的功耗来执行某些任务(例如图像处理)的能力而在许多移动计算平台中变得越来越普遍。在本文中,作者将重点放在使用细胞神经网络(CNN)作为专门的加速器。 CNN是一种非常适合图像处理应用程序的神经计算范例。但是,最初将硬件实现开发为仅处理较小的图像大小。作者提出了SP-CNN,一种可为CNN应用程序提供可伸缩性的体系结构和多路复用算法。作者在一组六个图像处理基准上演示了所提出的复用算法,并提出了SP-CNN的性能分析。

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