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Marine autonomous navigation for biomimetic underwater robots based on deep stereo attention network 会议论文
, Prague, Czech Republic, 2021年9月27日-2021年10月1日
作者:  Yan, Shuaizheng;  Wu, Zhengxing;  Wang, Jian;  Tan, Min;  Yu, Junzhi
Adobe PDF(4783Kb)  |  收藏  |  浏览/下载:171/64  |  提交时间:2023/06/12
Autonomous underwater vehicles  Visualization  Navigation  Biological system modeling  Real-time systems  
Stress Detection Using Wearable Devices based on Transfer Learning 会议论文
, Online, 2021-12
作者:  Jinting Wu;  Yujia Zhang;  Xiaoguang Zhao
Adobe PDF(241Kb)  |  收藏  |  浏览/下载:277/95  |  提交时间:2022/09/02
Stress Detection  Transfer Learning  Physiological Signal Processing  Wearable Devices  
Block Convolution: Towards Memory-Efficient Inference of Large-Scale CNNs on FPGA 期刊论文
IEEE Transactions on Computer-Aided Design of Integrated Circuits and Systems, 2021, 期号: 2021.5, 页码: 1-1
作者:  Li, Gang;  Liu, Zejian;  Li, Fanrong;  Cheng, Jian
Adobe PDF(6174Kb)  |  收藏  |  浏览/下载:204/42  |  提交时间:2022/02/15
block convolution  memory-efficient  off-chip transfer  fpga  cnn accelerator  
Diagnosis of Typical Apple Diseases: A Deep Learning Method Based on Multi-Scale Dense Classification Network 期刊论文
FRONTIERS IN PLANT SCIENCE, 2021, 卷号: 12, 页码: 12
作者:  Tian, Yunong;  Li, En;  Liang, Zize;  Tan, Min;  He, Xiongkui
Adobe PDF(4280Kb)  |  收藏  |  浏览/下载:221/6  |  提交时间:2021/12/28
apple disease diagnosis  Cycle-GAN  Multi-scale connection  DenseNet  deep learning  
Motion Complementary Network for Efficient Action Recognition 会议论文
, 线上, January 2021
作者:  Cheng,Ke;  Zhang,Yifan;  Li,Chenghua;  Cheng,Jian;  Lu,Hanqing
Adobe PDF(1128Kb)  |  收藏  |  浏览/下载:306/79  |  提交时间:2021/07/23
Audio-Visual Speech Separation with Visual Features Enhanced by Adversarial Training 会议论文
0, 线上会议, 2021-7-18
作者:  Zhang Peng;  Xu Jiaming;  Shi Jing;  Hao Yunzhe;  Qin Lei;  Xu Bo
Adobe PDF(1900Kb)  |  收藏  |  浏览/下载:251/67  |  提交时间:2021/06/21
audio-visual speech separation  robust  adversarial training method  time-domain approach