作者
Caiwen Ding, Shuo Wang, Ning Liu, Kaidi Xu, Yanzhi Wang, Yun Liang
发表日期
2019/2/20
研讨会论文
(FPGA) Proceedings of the 2019 ACM/SIGDA International Symposium on Field-Programmable Gate Arrays
页码范围
33-42
出版商
ACM
简介
Deep neural networks (DNNs), as the basis of object detection, will play a key role in the development of future autonomous systems with full autonomy. The autonomous systems have special requirements of real-time, energy-e cient implementations of DNNs on a power-budgeted system. Two research thrusts are dedicated to per- formance and energy e ciency enhancement of the inference phase of DNNs. The first one is model compression techniques while the second is e cient hardware implementations. Recent researches on extremely-low-bit CNNs such as binary neural network (BNN) and XNOR-Net replace the traditional oating point operations with bi- nary bit operations, signi cantly reducing memory bandwidth and storage requirement, whereas suffering non-negligible accuracy loss and waste of digital signal processing (DSP) blocks on FPGAs. To overcome these limitations, this paper proposes REQ …
引用总数
20192020202120222023202451428273014
学术搜索中的文章
C Ding, S Wang, N Liu, K Xu, Y Wang, Y Liang - proceedings of the 2019 ACM/SIGDA international …, 2019