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This repo. is an implementation of R2Net, which is accepted for in Image and Vision Computing.

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R2Net-Residual-Refinement-Network-for-Salient-Object-Detection

This repo. is an implementation of R2Net, which is accepted for in Image and Vision Computing.

Paper

The paper is here.

Saliency maps

you can find the saliency maps on DUTS-TE、ECSSD、HKU-IS、DUT-OMRON and PASCAL-S datasets and the weight file from Google Driver link and the Baidu online disk link (Code:RRNe)

Codes

The train.py file contains the training code, If you want to retrain, please download the training set and test set from here, and unzip the file, then modify the "train_dataset" parameter to your own path.

if you want to test, just modify the path of the saliency maps, and I think you have your own testing code. So I provide our saliency maps additionally.

We use the code provided by this repo. to calculate the metrics.

We choose PaddlePaddle as the framework, in particular, PaddlePaddle provides a good learning environment and hardware facilities. If you want the PyTorch version of the code, it will be available right away.

Results

The effect of R^2Net on 5 benchmark datasets is as follows, we achieve the SOTA results than any existing SOD methods.

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This repo. is an implementation of R2Net, which is accepted for in Image and Vision Computing.

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