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Hybrid-Label-SOD_TCSVT2022

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.

Network

Our overall framework(b):

image

Refine Network

image

Requirement

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.

Data Preprocessing

Please follow the tips to download the processed datasets and pre-trained model:

  1. Download training data from [Link], code: mvpl.
  2. Download testing data from [Link], code: mvpl.
├── 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 and Testing

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.

Evaluation

We implement three metrics: MAE(Mean Absolute Error), F-Measure, S-Measure. We use Toolkit [Link] to obtain the test metrics.

Results

  1. Qualitative results: we provide the saliency maps, you can download them from [Link], code: 0812.
  2. Quantitative results:

image

Bibtex

   @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}
    }
  

Contact Us

If you have any questions, please contact Runmin Cong at rmcong@bjtu.edu.cn or Qi Qin at qiqin96@bjtu.edu.cn.

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