Runmin Cong, Qi Qin, Chen Zhang, Qiuping Jiang, Shiqi Wang, Yao Zhao, and Sam Kwong, A weakly supervised learning framework for salient object detection via hybrid labels, IEEE Transactions on Circuits and Systems for Video Technology, 2022. In Press.
Pleasure configure the environment according to the given version:
- python 3.8.5
- pytorch 1.8.0
- cudatoolkit 11.7
- torchvision 0.9.0
- tensorboardx 2.5.0
- opencv-python 4.4.0.46
- numpy 1.19.2
- timm 0.6.11
We also provide ".yaml" files for conda environment configuration, you can download it from [Link], code: mvpl, then use conda env create -f requirement.yaml
to create a required environment.
Please follow the tips to download the processed datasets and pre-trained model:
├── data
├── coarse
├── DUTS
├── SOD
├── dataset.py
├── transform.py
├── data_tset
├── lib
├── origin
├── CEL.py
├── data_prefetcher.py
├── LR_Scheduler.py
├── GCF.py
├── net.py
├── test.py
├── train.py
Training command : Please unzip the training data set to data\DUTS and unzip coarse maps of training data set to data\coarse.
python train.py
Tips: Our validation set is 100 images from the SOD dataset.
Testing command : Please unzip the testing data set to data_test.
The trained model for S-Net can be download here: [Link], code: mvpl.
python test.py ours\state_final.pt
Tips: We use Toolkit [Link] to obtain the test metrics.
We implement three metrics: MAE(Mean Absolute Error), F-Measure, S-Measure. We use Toolkit [Link] to obtain the test metrics.
- Qualitative results: we provide the saliency maps, you can download them from [Link], code: 0812.
- Quantitative results:
@article{HybridSOD,
title={A weakly supervised learning framework for salient object detection via hybrid labels},
author={Cong, Runmin and Qin, Qi and Zhang, Chen and Jiang, Qiuping and Wang, Shiqi and Zhao, Yao and Kwong, Sam },
journal={IEEE Trans. Circuits Syst. Video Technol. },
year={early access, doi: 10.1109/TCSVT.2022.3205182},
publisher={IEEE}
}
If you have any questions, please contact Runmin Cong at rmcong@bjtu.edu.cn or Qi Qin at qiqin96@bjtu.edu.cn.