Awesome
SimT: Handling Open-set Noise for Domain Adaptive Semantic Segmentation
by Xiaoqing Guo.
Summary:
Intoduction:
This repository is for our CVPR 2022 paper "SimT: Handling Open-set Noise for Domain Adaptive Semantic Segmentation"(知乎) and IEEE TPAMI 2023 paper "Handling Open-set Noise and Novel Target Recognition in Domain Adaptive Semantic Segmentation"
Two branches of the project:
- Main branch (SimT-CVPR):
git clone https://github.com/CityU-AIM-Group/SimT.git
- SimT-TPAMI branch:
git clone -b SimT-TPAMI23 https://github.com/CityU-AIM-Group/SimT.git
Framework:
Usage:
Requirement:
Pytorch 1.3 & Pytorch 1.7 are ok
Python 3.6
Preprocessing:
Clone the repository:
git clone https://github.com/Guo-Xiaoqing/SimT.git
cd SimT
bash sh_warmup.sh ## Stage of warmup
bash sh_simt.sh ## Stage of training with SimT
Data preparation:
The pseudo labels generated from the UDA black box of BAPA-Net [1] can be downloaded from Google Drive
The pseudo labels generated from the SFDA black box of SFDASeg [2] can be downloaded from Google Drive
[1] Yahao Liu, Jinhong Deng, Xinchen Gao, Wen Li, and Lixin Duan. Bapa-net: Boundary adaptation and prototype align- ment for cross-domain semantic segmentation. In ICCV, pages 8801–8811, 2021.
[2] Jogendra Nath Kundu, Akshay Kulkarni, Amit Singh,Varun Jampani, and R Venkatesh Babu. Generalize then adapt: Source-free domain adaptive semantic segmentation. In ICCV, pages 7046–7056, 2021.
Pretrained model:
You should download the pretrained model, warmup UDA model, and warmup SFDA model from Google Drive, and then put them in the './snapshots' folder for initialization.
Well trained model:
You could download the well trained UDA and SFDA models from Google Drive.
Log file
Log file can be found here
Citation:
@inproceedings{guo2022simt,
title={SimT: Handling Open-set Noise for Domain Adaptive Semantic Segmentation},
author={Guo, Xiaoqing and Liu, Jie and Liu, Tongliang and Yuan, Yixuan},
booktitle= {CVPR},
year={2022}
}
Questions:
Please contact "xiaoqingguo1128@gmail.com"