Design and implementation of neural network computing framework on Zynq SoC embedded platform

Procedia Computer Science(2021)

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摘要
Abstract Limited resources and low computing power of embedded platform make it difficult to apply neural network technology. To overcome this problem, a new neural network computing framework “Zynq-Darknet” was proposed. The framework is based on Darknet, which constructs depthwise separable convolution and a lightweight classification model MobileNetV2 and was deployed to Xilinx Zynq-7000 System-on-Chip (SoC) with Linux operating system (OS). In order to verify the performance of the framework and model, experiments were conducted on imagenet-1k dataset using different network structures. The results show that the MobileNetV2 network model based on Zynq-Darknet can effectively perform image classification, and ensure a certain real-time and accuracy while reducing the computational complexity and storage overhead, assuming promising application prospects.
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关键词
Neural network, embedded platform, Zynq SoC, darknet, depthwise separable convolution, MobileNetV2
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