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RBCN: Rectified Binary Convolutional Networks for Enhancing the
  Performance of 1-bit DCNNs

RBCN: Rectified Binary Convolutional Networks for Enhancing the Performance of 1-bit DCNNs

21 August 2019
Chunlei Liu
Wenrui Ding
Xin Xia
Yuan Hu
Baochang Zhang
Jianzhuang Liu
Bohan Zhuang
G. Guo
    MQ
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Papers citing "RBCN: Rectified Binary Convolutional Networks for Enhancing the Performance of 1-bit DCNNs"

4 / 4 papers shown
Title
Binary Neural Networks as a general-propose compute paradigm for
  on-device computer vision
Binary Neural Networks as a general-propose compute paradigm for on-device computer vision
Guhong Nie
Lirui Xiao
Menglong Zhu
Dongliang Chu
Yue-Hong Shen
Peng Li
Kan Yang
Li Du
Bo Chen Dji Innovations Inc
MQ
34
5
0
08 Feb 2022
Direct Quantization for Training Highly Accurate Low Bit-width Deep
  Neural Networks
Direct Quantization for Training Highly Accurate Low Bit-width Deep Neural Networks
Ziquan Liu
Wuguannan Yao
Qiao Li
Antoni B. Chan
MQ
24
9
0
26 Dec 2020
Loss Aware Post-training Quantization
Loss Aware Post-training Quantization
Yury Nahshan
Brian Chmiel
Chaim Baskin
Evgenii Zheltonozhskii
Ron Banner
A. Bronstein
A. Mendelson
MQ
31
163
0
17 Nov 2019
Incremental Network Quantization: Towards Lossless CNNs with
  Low-Precision Weights
Incremental Network Quantization: Towards Lossless CNNs with Low-Precision Weights
Aojun Zhou
Anbang Yao
Yiwen Guo
Lin Xu
Yurong Chen
MQ
337
1,049
0
10 Feb 2017
1