CVARApr 27, 2020

A scalable and efficient convolutional neural network accelerator using HLS for a System on Chip design

arXiv:2004.13075v2
Originality Synthesis-oriented
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This work addresses efficient deep learning deployment on resource-constrained embedded systems, representing an incremental improvement in hardware acceleration methods.

The paper tackled the problem of accelerating CNN inference on embedded SoC platforms by developing a scalable, configurable accelerator using HLS and SystemC, achieving 2.0 seconds inference time and 6.0 GOPS/W power efficiency for VGG16 on a Xilinx Ultra96 board.

This paper presents a configurable Convolutional Neural Network Accelerator (CNNA) for a System on Chip design (SoC). The goal was to accelerate inference of different deep learning networks on an embedded SoC platform. The presented CNNA has a scalable architecture which uses High Level Synthesis (HLS) and SystemC for the hardware accelerator. It is able to accelerate any Convolutional Neural Network (CNN) exported from Python and supports a combination of convolutional, max-pooling, and fully connected layers. A training method with fixed-point quantized weights is proposed and presented in the paper. The CNNA is template-based, enabling it to scale for different targets of the Xilinx Zynq platform. This approach enables design space exploration, which makes it possible to explore several configurations of the CNNA during C- and RTL-simulation, fitting it to the desired platform and model. The CNN VGG16 was used to test the solution on a Xilinx Ultra96 board using PYNQ. The result gave a high level of accuracy in training with an auto-scaled fixed-point Q2.14 format compared to a similar floating-point model. It was able to perform inference in 2.0 seconds, while having an average power consumption of 2.63 W, which corresponds to a power efficiency of 6.0 GOPS/W.

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