折纸:卷积网络加速器

L. Cavigelli, David Gschwend, Christoph Mayer, Samuel Willi, Beat Muheim, L. Benini
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引用次数: 149

摘要

如今,越来越复杂的先进计算机视觉(CV)系统被部署在越来越多的实时性和功耗限制很强的应用场景中。当前CV的趋势清楚地表明基于神经网络的算法的兴起,这些算法最近打破了许多物体检测和定位记录。这些方法非常灵活,可以通过改变参数来解决许多不同的挑战。在本文中,我们提出了第一个卷积网络加速器,它可以扩展到目前仅由工作站gpu处理的网络大小,但仍在嵌入式系统的功率包络内。该架构采用联电65nm技术,在3.09 mm2的核心面积上实现,在369 GOp/s/W下的吞吐量为274 GOp/s,外部存储器带宽仅为525 MB/s,“全双工”比以前的工作减少了90%以上。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Origami: A Convolutional Network Accelerator
Today advanced computer vision (CV) systems of ever increasing complexity are being deployed in a growing number of application scenarios with strong real-time and power constraints. Current trends in CV clearly show a rise of neural network-based algorithms, which have recently broken many object detection and localization records. These approaches are very flexible and can be used to tackle many different challenges by only changing their parameters. In this paper, we present the first convolutional network accelerator which is scalable to network sizes that are currently only handled by workstation GPUs, but remains within the power envelope of embedded systems. The architecture has been implemented on 3.09 mm2 core area in UMC 65 nm technology, capable of a throughput of 274 GOp/s at 369 GOp/s/W with an external memory bandwidth of just 525 MB/s full-duplex " a decrease of more than 90% from previous work.
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