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"Hybrid Fixed-Point/Binary Deep Neural Network Design Methodology for ..."
Jiun-In Guo et al. (2020)
- Jiun-In Guo
, Chia-Chi Tsai
, Jian-Lin Zeng, Shao-Wei Peng, En-Chih Chang
:
Hybrid Fixed-Point/Binary Deep Neural Network Design Methodology for Low-Power Object Detection. IEEE J. Emerg. Sel. Topics Circuits Syst. 10(3): 388-400 (2020)
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