Interpretable unsupervised learning framework for multi-dimensional erratic and random noise attenuation
MANet is an unsupervised-learning-based deep learning framework for 2D and 3D seismic random and erratic noise attenuation. This paper visualizes outputs and weights at different levels to study the interpretability of the network denoising process.
If you find this package useful, please do not forget to cite the following paper.
Yang, L., Fomel, S., Wang, S., Chen, X., Sun, Y., and Chen, Y. (2024). Interpretable unsupervised learning framework for multi-dimensional erratic and random noise attenuation, IEEE TGRS, In press.
BibTeX:
@article{YangDe2024,
title={Interpretable unsupervised learning framework for multi-dimensional erratic and random noise attenuation},
author={Liuqing Yang and Sergey Fomel and Shoudong Wang and Xiaohong Chen and Yaoguang Sun and Yangkang Chen},
journal={IEEE Transactions on Geoscience and Remote Sensing},
year={2024},
pages={in press},
}
GNU General Public License, Version 3
(http://www.gnu.org/copyleft/gpl.html)
- Tensforflow-gpu: 1.9.0
- numpy: 1.15.4
- Keras: 2.2.5
- GPU: GeForce RTX 1050 Ti
If you have any suggestions or questions, please contact me:
Liuqing Yang
yangliuqingqin@163.com