Code for the ICME 2021 paper "Exploring Driving-Aware Salient Object Detection via Knowledge Transfer"

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Deep LearningTSOD
Overview

TSOD

Code for the ICME 2021 paper "Exploring Driving-Aware Salient Object Detection via Knowledge Transfer"

Usage

  1. For training,
    open train_test, run python train.py
  2. For testing,
    open train_test, run python test.py
  3. For evaluating,
    open evaluate, run matlab -nosplash -nodesktop -r evaluation_all

Citation

@inproceedings{su2021exploring,
  title={Exploring Driving-Aware Salient Object Detection via Knowledge Transfer},
  author={Su, Jinming and Xia, Changqun and Li, Jia},
  booktitle={2021 IEEE International Conference on Multimedia and Expo (ICME)},
  pages={1--6},
  year={2021},
  organization={IEEE}
}
Owner
Jinming Su
Good Luck!
Jinming Su
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