作者
Andrew Maclellan, Lewis McLaughlin, Louise Crockett, Robert Stewart
发表日期
2019/9/8
研讨会论文
2019 29th International Conference on Field Programmable Logic and Applications (FPL)
页码范围
246-247
出版商
IEEE
简介
Floating point Convolutional Neural Networks(CNNs) are computationally expensive and deeper networks can be impractical to deploy on FPGAs - consuming a large number of resources and power, as well as having lengthy development times. Previous work has shown that CNNs can be quantised heavily using fixed point arithmetic to combat this without significant loss in classification accuracy. We aim to quantize an existing CNN architecture for radio modulation classification to 2-bit weights and activations, while retaining a level of accuracy close to the original paper, for deployment on a Zynq System on Chip (SoC). To improve the development time for hardware synthesisable CNNs, we make use of MATLAB System Objects and HDL Coder. The PYNQ framework is presented as a practical means for accessing the functionality of the CNN. Our preliminary results show a high classification accuracy even …
引用总数
2020202120222023142
学术搜索中的文章
A Maclellan, L McLaughlin, L Crockett, R Stewart - 2019 29th International Conference on Field …, 2019