An energy-efficient dehazing neural network accelerator based on E $$^2$$ AOD-Net


연구 분야: Verification



학회: Journal of Real-Time Image Processing


초록

Turbid media such as fog and haze seriously affects the quality of imaging for systems such as urban surveillance and satellite remote sensing. Image dehazing has become a research hotspot in the field of computer vision. Neural-network-based image dehazing has the potential of high performance, but requires high computational power and storage space, making it costly to deploy in a system with limited hardware resources, especially for edge computing systems. In this paper, we propose an energy-efficient dehazing neural network named E AOD-Net, which is pruned (generalization performance rises), quantized, pipelined, and parallelized over AOD-Net. We implement E AOD-Net on FPGA platform, achieving a lightweight dehazing hardware accelerator that realizes real-time dehazing. The experimental results show that the frame rate of E AOD-Net hardware accelerator inference reaches 38.3 FPS, while consuming the power of 2.491 watts. The VMAF index is improved by 89.14%. The energy efficiency is 42.61 GOPS/w.


Author Profile
Zhihao Zhang

School of Microelectronics Hefei University of Technology Hefei China

China
Author Profile
Gaoming Du

School of Microelectronics Hefei University of Technology Hefei China

China
Author Profile
Zhenmin Li

School of Microelectronics Hefei University of Technology Hefei China

China

📄 논문 정보

발행 연도 2024년
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출판 국가 China
사이트 Springer
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