Single-frame InfraRed Small Target (SIRST) Benchmark
A dataset proposed in "Asymmetric Contextual Modulation for Infrared Small Target Detection" https://arxiv.org/abs/2009.14530
Update:
- The improved version, SIRST v2, has been released. Please visit https://github.com/YimianDai/open-sirst-v2 to check the new dataset.
- The name of this dataset series is 'SIRST' and 'SIRST v2'. Please don't call it as 'NUAA-SIRST'.
Dataset Description
SIRST is a dataset specially constructed for single-frame infrared small target detection, in which the images are selected from hundreds of infrared sequences for different scenarios.
The bounding box and semantic segmentation annotations are available now. The rest annotation forms will come soon.
Learderboard
The full learderboard will come soon. A comparison of 19 methods can be found at https://github.com/YimianDai/open-acm.
Toolkit
The full toolkit will come soon. Some implementations of our proposed methods can be found at DENTIST, ACM, and ALCNet.
Citation
Please cite our paper in your publications if our work helps your research. BibTeX reference is as follows.
@article{TGRS23OSCAR,
author = {{Dai}, Yimian and {Li}, Xiang and {Zhou}, Fei and {Qian}, Yulei and {Chen}, Yaohong and {Yang}, Jian },
title = {{One-Stage Cascade Refinement Networks for Infrared Small Target Detection}},
journal = {IEEE Transactions on Geoscience and Remote Sensing},
pages = {1--17},
year = {2023},
}
Y Dai, X Li, F Zhou, Y Qian, Y Chen, J Yang
IEEE Transactions on Geoscience and Remote Sensing 61, 1-17
@article{TGRS21ALCNet,
author = {{Dai}, Yimian and {Wu}, Yiquan and {Zhou}, Fei and {Barnard}, Kobus},
title = {{Attentional Local Contrast Networks for Infrared Small Target Detection}},
journal = {IEEE Transactions on Geoscience and Remote Sensing},
pages = {1--12},
year = {2021},
}
@inproceedings{dai21acm,
title = {Asymmetric Contextual Modulation for Infrared Small Target Detection},
author = {Yimian Dai and Yiquan Wu and Fei Zhou and Kobus Barnard},
booktitle = {{IEEE} Winter Conference on Applications of Computer Vision, {WACV} 2021}
year = {2021}
}