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Learning Crisp Boundaries Using Deep Refinement Network and Adaptive
  Weighting Loss

Learning Crisp Boundaries Using Deep Refinement Network and Adaptive Weighting Loss

2 February 2021
Yijun Cao
Chuan Lin
Yongjie Li
ArXivPDFHTML

Papers citing "Learning Crisp Boundaries Using Deep Refinement Network and Adaptive Weighting Loss"

6 / 6 papers shown
Title
UHNet: An Ultra-Lightweight and High-Speed Edge Detection Network
UHNet: An Ultra-Lightweight and High-Speed Edge Detection Network
Fuzhang Li
Chuan Lin
37
1
0
08 Aug 2024
Learning to utilize image second-order derivative information for crisp edge detection
Learning to utilize image second-order derivative information for crisp edge detection
Changsong Liu
Wei Zhang
Mingyang Li
Yimeng Fan
Yanyan Liu
Y. Li
W. Li
L. Zhang
39
0
0
09 Jun 2024
Unsupervised Visual Odometry and Action Integration for PointGoal
  Navigation in Indoor Environment
Unsupervised Visual Odometry and Action Integration for PointGoal Navigation in Indoor Environment
Yijun Cao
Xian-Shi Zhang
Fuya Luo
Chuan Lin
Yongjie Li
30
7
0
02 Oct 2022
One-Stage Deep Edge Detection Based on Dense-Scale Feature Fusion and
  Pixel-Level Imbalance Learning
One-Stage Deep Edge Detection Based on Dense-Scale Feature Fusion and Pixel-Level Imbalance Learning
Dawei Dai
Chunjie Wang
Shuyin Xia
Yingge Liu
Guo-Zhen Wang
27
8
0
17 Mar 2022
Thermal Infrared Image Colorization for Nighttime Driving Scenes with
  Top-Down Guided Attention
Thermal Infrared Image Colorization for Nighttime Driving Scenes with Top-Down Guided Attention
Fuya Luo
Yunhan Li
Guang Zeng
Peng Peng
Gang Wang
Yongjie Li
38
62
0
29 Apr 2021
Real-Time Single Image and Video Super-Resolution Using an Efficient
  Sub-Pixel Convolutional Neural Network
Real-Time Single Image and Video Super-Resolution Using an Efficient Sub-Pixel Convolutional Neural Network
Wenzhe Shi
Jose Caballero
Ferenc Huszár
J. Totz
Andrew P. Aitken
Rob Bishop
Daniel Rueckert
Zehan Wang
SupR
198
5,176
0
16 Sep 2016
1