This package has the source code for the paper "A Stagewise Refinement Model for Detecting Salient Objects in Images" (ICCV17).
- The paper can be found in Baidu drive or Google drive.
- We use Caffe to train our Stagewise Refinement Model.
- Our Resnet-50 model is based on the previous work simon2016cnnmodels "Imagenet pretrained models with batch normalization".
- Saliency maps are generated without any pre- or post-processing.
Train
- Download our initialized model from Baidu drive or Google drive.
- Use the code in
./train
to train the network.
Test
- Download our trained model from Baidu drive or Google drive.
- Run
./test/test.m
to generate saliency maps in the./saliency_map
folder.
- The saliency maps on 10 datasets including ECSSD, PASCAL-S, SOD, SED1, SED2, MSRA, DUT-OMRON, THUR15K, HKU-IS and DUTS can be found in Baidu drive or Google drive.
If you find this work useful in your research, please consider citing:
@inproceedings{wangiccv17,
author={Wang, Tiantian and Borji, Ali and Zhang, Lihe and Zhang, Pingping and Lu, Huchuan},
title={A Stagewise Refinement Model for Detecting Salient Objects in Images},
booktitle = {The IEEE International Conference on Computer Vision (ICCV)},
year = {2017}
}