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The Second Monocular Depth Estimation Challenge

Authors :
Spencer, Jaime
Qian, C. Stella
Trescakova, Michaela
Russell, Chris
Hadfield, Simon
Graf, Erich W.
Adams, Wendy J.
Schofield, Andrew J.
Elder, James
Bowden, Richard
Anwar, Ali
Chen, Hao
Chen, Xiaozhi
Cheng, Kai
Dai, Yuchao
Hoa, Huynh Thai
Hossain, Sadat
Huang, Jianmian
Jing, Mohan
Li, Bo
Li, Chao
Li, Baojun
Liu, Zhiwen
Mattoccia, Stefano
Mercelis, Siegfried
Nam, Myungwoo
Poggi, Matteo
Qi, Xiaohua
Ren, Jiahui
Tang, Yang
Tosi, Fabio
Trinh, Linh
Uddin, S. M. Nadim
Umair, Khan Muhammad
Wang, Kaixuan
Wang, Yufei
Wang, Yixing
Xiang, Mochu
Xu, Guangkai
Yin, Wei
Yu, Jun
Zhang, Qi
Zhao, Chaoqiang
Spencer, Jaime
Qian, C. Stella
Trescakova, Michaela
Russell, Chris
Hadfield, Simon
Graf, Erich W.
Adams, Wendy J.
Schofield, Andrew J.
Elder, James
Bowden, Richard
Anwar, Ali
Chen, Hao
Chen, Xiaozhi
Cheng, Kai
Dai, Yuchao
Hoa, Huynh Thai
Hossain, Sadat
Huang, Jianmian
Jing, Mohan
Li, Bo
Li, Chao
Li, Baojun
Liu, Zhiwen
Mattoccia, Stefano
Mercelis, Siegfried
Nam, Myungwoo
Poggi, Matteo
Qi, Xiaohua
Ren, Jiahui
Tang, Yang
Tosi, Fabio
Trinh, Linh
Uddin, S. M. Nadim
Umair, Khan Muhammad
Wang, Kaixuan
Wang, Yufei
Wang, Yixing
Xiang, Mochu
Xu, Guangkai
Yin, Wei
Yu, Jun
Zhang, Qi
Zhao, Chaoqiang
Publication Year :
2023

Abstract

This paper discusses the results for the second edition of the Monocular Depth Estimation Challenge (MDEC). This edition was open to methods using any form of supervision, including fully-supervised, self-supervised, multi-task or proxy depth. The challenge was based around the SYNS-Patches dataset, which features a wide diversity of environments with high-quality dense ground-truth. This includes complex natural environments, e.g. forests or fields, which are greatly underrepresented in current benchmarks. The challenge received eight unique submissions that outperformed the provided SotA baseline on any of the pointcloud- or image-based metrics. The top supervised submission improved relative F-Score by 27.62%, while the top self-supervised improved it by 16.61%. Supervised submissions generally leveraged large collections of datasets to improve data diversity. Self-supervised submissions instead updated the network architecture and pretrained backbones. These results represent a significant progress in the field, while highlighting avenues for future research, such as reducing interpolation artifacts at depth boundaries, improving self-supervised indoor performance and overall natural image accuracy.<br />Comment: Published at CVPRW2023

Details

Database :
OAIster
Publication Type :
Electronic Resource
Accession number :
edsoai.on1381617924
Document Type :
Electronic Resource