Growing community of inventors

Beijing, China

Libin Wang

Average Co-Inventor Count = 6.42

ph-index = 3

The patent ph-index is calculated by counting the number of publications for which an author has been cited by other authors at least that same number of times.

Forward Citations = 16

Libin WangAnbang Yao (14 patents)Libin WangYurong Chen (12 patents)Libin WangLin Xu (10 patents)Libin WangShandong Wang (10 patents)Libin WangPing Hu (10 patents)Libin WangYiwen Guo (10 patents)Libin WangDongqi Cai (10 patents)Libin WangWenhua Cheng (10 patents)Libin WangYuqing Hou (5 patents)Libin WangLiu Yang (3 patents)Libin WangPing Wang (2 patents)Libin WangJianguo Li (2 patents)Libin WangYanlin Song (2 patents)Libin WangZhou Su (2 patents)Libin WangLiang Yang (1 patent)Libin WangXu Huang (1 patent)Libin WangHeng Sun (1 patent)Libin WangQiang Yang (1 patent)Libin WangFengyu Li (1 patent)Libin WangPeiyi Yong (1 patent)Libin WangCe Tian (1 patent)Libin WangMingzhu Li (1 patent)Libin WangLibin Wang (16 patents)Anbang YaoAnbang Yao (107 patents)Yurong ChenYurong Chen (68 patents)Lin XuLin Xu (74 patents)Shandong WangShandong Wang (25 patents)Ping HuPing Hu (24 patents)Yiwen GuoYiwen Guo (19 patents)Dongqi CaiDongqi Cai (13 patents)Wenhua ChengWenhua Cheng (10 patents)Yuqing HouYuqing Hou (8 patents)Liu YangLiu Yang (33 patents)Ping WangPing Wang (113 patents)Jianguo LiJianguo Li (52 patents)Yanlin SongYanlin Song (15 patents)Zhou SuZhou Su (6 patents)Liang YangLiang Yang (18 patents)Xu HuangXu Huang (10 patents)Heng SunHeng Sun (4 patents)Qiang YangQiang Yang (3 patents)Fengyu LiFengyu Li (1 patent)Peiyi YongPeiyi Yong (1 patent)Ce TianCe Tian (1 patent)Mingzhu LiMingzhu Li (1 patent)
..
Inventor’s number of patents
..
Strength of working relationships

Company Filing History:

1. Intel Corporation (14 from 54,155 patents)

2. The Procter & Gamble Company (2 from 17,032 patents)

3. Chinese Academy of Sciences (2 from 3,002 patents)


16 patents:

1. 12217163 - Methods and systems for budgeted and simplified training of deep neural networks

2. 11803739 - Methods and systems for budgeted and simplified training of deep neural networks

3. 11790223 - Methods and systems for boosting deep neural networks for deep learning

4. 11704894 - Semantic image segmentation using gated dense pyramid blocks

5. 11635943 - Systems and methods for generating gaussian random numbers with hardware acceleration

6. 11551335 - Methods and systems using camera devices for deep channel and convolutional neural network images and formats

7. 11538164 - Coupled multi-task fully convolutional networks using multi-scale contextual information and hierarchical hyper-features for semantic image segmentation

8. 11537851 - Methods and systems using improved training and learning for deep neural networks

9. 11341368 - Methods and systems for advanced and augmented training of deep neural networks using synthetic data and innovative generative networks

10. 11263490 - Methods and systems for budgeted and simplified training of deep neural networks

11. 11176632 - Advanced artificial intelligence agent for modeling physical interactions

12. 11157764 - Semantic image segmentation using gated dense pyramid blocks

13. 11107189 - Methods and systems using improved convolutional neural networks for image processing

14. 10929977 - Coupled multi-task fully convolutional networks using multi-scale contextual information and hierarchical hyper-features for semantic image segmentation

15. 10737294 - Article with aesthetic substrate

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9/10/2025
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