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An Overview of Arithmetic Adaptations for Inference of Convolutional Neural Networks on Re-configurable Hardware

机译:卷积神经网络推断算术适应算法概述重新配置硬件

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Convolutional Neural Networks (CNNs) have gained high popularity as a tool for computer vision tasks and for that reason are used in various applications. There are many different concepts, like single shot detectors, that have been published for detecting objects in images or video streams. However, CNNs suffer from disadvantages regarding the deployment on embedded platforms such as re-configurable hardware like Field Programmable Gate Arrays (FPGAs). Due to the high computational intensity, memory requirements and arithmetic conditions, a variety of strategies for running CNNs on FPGAs have been developed. The following methods showcase our best practice approaches for a TinyYOLOv3 detector network on a XILINX Artix-7 FPGA using techniques like fusion of batch normalization, filter pruning and post training network quantization.
机译:卷积神经网络(CNNS)作为计算机视觉任务的工具获得了很高的普及,并且因此在各种应用中使用该工具。 已经发布了许多不同的概念,例如单次拍摄检测器,用于检测图像或视频流中的对象。 然而,CNNS遭受关于嵌入式平台上部署的缺点,例如可编程硬件等可编程门阵列(FPGA)。 由于计算强度高,内存要求和算术条件,开发了在FPGA上运行CNN的各种策略。 以下方法展示了在Xilinx Artix-7 FPGA上的Tinyyolov3探测器网络的最佳实践方法,使用批量归一化,滤波器修剪和后训练网络量化等技术。

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