Lightweight Salient Object Detection in Optical Remote Sensing Images via Feature Correlation

Related tags

Deep LearningCorrNet
Overview

CorrNet

This project provides the code and results for 'Lightweight Salient Object Detection in Optical Remote Sensing Images via Feature Correlation', IEEE TGRS, accepted, 2022. IEEE link and arxiv link

Network Architecture

Accuracy v.s. Parameters

Requirements

python 2.7 + pytorch 0.4.0 or

python 3.7 + pytorch 1.9.0

Saliency maps

We provide saliency maps of all compared methods (code: kftm) and our CorrNet (code: fbee) on ORSSD and EORSSD datasets.

In addition, we also provide saliency maps of our CorrNet (code: lm21) on the recently published ORSI-4199 dataset.

Image

Training

Modify pathes of VGG backbone (code: ego5) in /model/vgg.py and datasets, then run train_CorrNet.py.

Pre-trained model and testing

Download the following pre-trained model, and modify pathes of pre-trained model and datasets, then run test_CorrNet.py.

We also uploaded these pre-trained models in /models.

ORSSD (code: vqi7)

EORSSD (code: q5mr)

ORSI-4199 (code: va3b)

Evaluation Tool

You can use the evaluation tool (MATLAB version) to evaluate the above saliency maps.

ORSI-SOD_Summary

Citation

    @ARTICLE{Li_2022_CorrNet,
            author = {Gongyang Li and Zhi Liu and Zhen Bai and Weisi Lin and Haibin Ling},
            title = {Lightweight Salient Object Detection in Optical Remote Sensing Images via Feature Correlation},
            journal = {IEEE Transactions on Geoscience and Remote Sensing},
            year = {2022},
            doi = {10.1109/TGRS.2022.3145483},
            }

If you encounter any problems with the code, want to report bugs, etc.

Please contact me at [email protected] or [email protected].

Owner
Gongyang Li
PhD Candidate in Shanghai University. Homepage: mathlee.github.io
Gongyang Li
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