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Inventor profile of:

Xinchen YE

City:

Dalian

Country:

China

Published Applications:

5

Last publication date:

2021-12-16

Top Assignees for applications by Xinchen YE

The entities that hold a legal rights for patent applications filed by inventor YE Xinchen:

  • DALIAN UNIVERSITY OF TECHNOLOGY 3 Liaoning, China
  • Dalian University of Technology 1 Dalian, China

Recent patent applications by YE Xinchen

Xinchen YE from Dalian, CN has applied for patents for these inventions. The list has both pending applications and granted patents:

#1 | 2021-12-16
US20210390723A1
Physics

MONOCULAR UNSUPERVISED DEPTH ESTIMATION METHOD BASED ON CONTEXTUAL ATTENTION MECHANISM

#2 | 2021-12-16
US20210390686A1
Physics

Unsupervised content-preserved domain adaptation method for multiple CT lung texture recognition

#3 | 2021-12-16
US20210390339A1
Physics

Depth estimation and color correction method for monocular underwater images based on deep neural network

#4 | 2021-12-16
US20210390338A1
Physics

Deep network lung texture recogniton method combined with multi-scale attention

#5 | 2020-08-13
US20200258218A1
Physics

Method based on deep neural network to extract appearance and geometry features for pulmonary textures classification

InventorID:

5271069 ⎘

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