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An OpenCL-Based FPGA Accelerator with the Winograd’s Minimal Filtering Algorithm for Convolution Neuron Networks

机译:基于WinCL的最小过滤算法的基于OpenCL的FPGA加速器,用于卷积神经元网络

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Convolutional neural network has been extensively used in image classification, video processing and semantic recognition. Generally speaking, convolutional neural network is accelerated by high power GPU, but this work uses the FPGA to speed up the convolutional neural network because of its configurability and low power consumption advantage over GPU. Especially, OpenCL-based high-level synthesis tools can provide fast verification and implementation flows. This work mainly uses the Winograd’s minimal filtering algorithm to accelerate VGG-16 network on Intel Arria 10 GX FPGA board and has a good effect on 3x3 convolution kernel. The peak performance of 227 GOP/S has been achieved with 544 DSP.
机译:卷积神经网络已广泛用于图像分类,视频处理和语义识别。一般而言,卷积神经网络是由高功率GPU加速的,但是这项工作使用FPGA来加快卷积神经网络的速度,因为它的可配置性和相对于GPU的低功耗优势。特别是,基于OpenCL的高级综合工具可以提供快速的验证和实现流程。这项工作主要使用Winograd的最小过滤算法来加速Intel Arria 10 GX FPGA板上的VGG-16网络,并且对3x3卷积内核具有良好的效果。 544 DSP已达到227 GOP / S的峰值性能。

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