Skip to main content
Log in

Self-supervised learning-based oil spill detection of hyperspectral images

  • Article
  • Published:
Science China Technological Sciences Aims and scope Submit manuscript

Abstract

Oil spill monitoring in remote sensing field has become a very popular technology to detect the spatial distribution of polluted regions. However, previous studies mainly focus on the supervised detection technologies, which requires a large number of high-quality training set. To solve this problem, we propose a self-supervised learning method to learn the deep neural network from unlabelled hyperspectral data for oil spill detection, which consists of three parts: data augmentation, unsupervised deep feature learning, and oil spill detection network. First, the original image is augmented with spectral and spatial transformation to improve robustness of the self-supervised model. Then, the deep neural networks are trained on the augmented data without label information to produce the high-level semantic features. Finally, the pre-trained parameters are transferred to establish a neural network classifier to obtain the detection result, where a contrastive loss is developed to fine-tune the learned parameters so as to improve the generalization ability of the proposed method. Experiments performed on ten oil spill datasets reveal that the proposed method obtains promising detection performance with respect to other state-of-the-art hyperspectral detection approaches.

This is a preview of subscription content, log in via an institution to check access.

Access this article

Price excludes VAT (USA)
Tax calculation will be finalised during checkout.

Instant access to the full article PDF.

Similar content being viewed by others

References

  1. Wang X Z, Liu D, Cheng G, et al. Solar heating assisted rapid cleanup of viscous crude oil spills using reduced graphene oxide-coated sponges. Sci China Tech Sci, 2020, 63: 1487–1496

    Article  Google Scholar 

  2. Gu Y F, Jin X D, Xiang R Z, et al. UAV-based integrated multi-spectral-LiDAR imaging system and data processing. Sci China Tech Sci, 2020, 63: 1293–1301

    Article  Google Scholar 

  3. Qin F K, Chen S T, Chen R, et al. Leakage detection of oil tank using terahertz spectroscopy. Sci China Tech Sci, 2021, 64: 1947–1952

    Article  Google Scholar 

  4. Duan P, Ghamisi P, Kang X, et al. Fusion of dual spatial information for hyperspectral image classification. IEEE Trans Geosci Remote Sens, 2021, 59: 7726–7738

    Article  Google Scholar 

  5. Zhang S, Kang X, Duan P, et al. Polygon structure-guided hyperspectral image classification with single sample for strong geometric characteristics scenes. IEEE Trans Geosci Remote Sens, 2022, 60: 1–12

    Google Scholar 

  6. Kang X, Duan P, Xiang X, et al. Detection and correction of mislabeled training samples for hyperspectral image classification. IEEE Trans Geosci Remote Sens, 2018, 56: 5673–5686

    Article  Google Scholar 

  7. Lu Y C, Shi J, Hu C M, et al. Optical interpretation of oil emulsions in the ocean. Part II: Applications to multi-band coarse-resolution imagery. Remote Sens Environ, 2020, 242: 111778

    Article  Google Scholar 

  8. Pelta R, Carmon N, Ben-Dor E. A machine learning approach to detect crude oil contamination in a real scenario using hyperspectral remote sensing. Int J Appl Earth Observ GeoInf, 2019, 82: 101901

    Article  Google Scholar 

  9. Yang J, Ren G, Ma Y, et al. Oil spill AISA+ hyperspectral data detection based on different sea surface glint suppression methods. Int Arch Photogramm Remote Sens Spatial Inf Sci, 2018, XLII-3: 2083–2087

    Article  Google Scholar 

  10. Löw F, Stieglitz K, Diemar O. Terrestrial oil spill mapping using satellite earth observation and machine learning: A case study in South Sudan. J Environ Manage, 2021, 298: 113424

    Article  Google Scholar 

  11. Duan P, Lai J, Kang J, et al. Texture-aware total variation-based removal of sun glint in hyperspectral images. ISPRS J Photogram Remote Sens, 2020, 166: 359–372

    Article  Google Scholar 

  12. Liu D, Han L. Spectral curve shape matching using derivatives in hyperspectral images. IEEE Geosci Remote Sens Lett, 2017, 14: 504–508

    Article  Google Scholar 

  13. Liu D, Zhang J, Wang X. Reference spectral signature selection using density-based cluster for automatic oil spill detection in hyperspectral images. Opt Express, 2016, 24: 7411

    Article  Google Scholar 

  14. Song D M, Liu B, Chen S C, et al. Classification of the different thickness of the oil film based on wavelet transform spectrum information. Aquat Procedia, 2015, 3: 133–143

    Article  Google Scholar 

  15. Liu B, Li Y, Chen P, et al. Extraction of oil spill information using decision tree based minimum noise fraction transform. J Ind Soc Remote Sens, 2016, 44: 421–426

    Article  Google Scholar 

  16. Song M P, Chang M, An J B, et al. Active contour segmentation for hyperspectral oil spill remote sensing. In: Proceedings of the Society of Photo-Optical Instrumentation Engineers (SPIE) Conference Series. Beijing, 2013. 891026

  17. Wang B, Shao Q, Song D, et al. A spectral-spatial features integrated network for hyperspectral detection of marine oil spill. Remote Sens, 2021, 13: 1568

    Article  Google Scholar 

  18. Zhu X, Li Y, Zhang Q, et al. Oil film classification using deep learning-based hyperspectral remote sensing technology. Int J Geo-Infor, 2019, 8: 181

    Article  Google Scholar 

  19. Yang J F, Wan J H, Ma Y, et al. Oil spill hyperspectral remote sensing detection based on DCNN with multi-scale features. J Coast Res, 2019, 90: 332

    Article  Google Scholar 

  20. Lan M, Zhang Y, Zhang L, et al. Global context based automatic road segmentation via dilated convolutional neural network. Inf Sci, 2020, 535: 156–171

    Article  MathSciNet  Google Scholar 

  21. Sun X, Qu Y, Gao L, et al. Target detection through tree-structured encoding for hyperspectral images. IEEE Trans Geosci Remote Sens, 2021, 59: 4233–4249

    Article  Google Scholar 

  22. Yue J, Fang L, Rahmani H, et al. Self-supervised learning with adaptive distillation for hyperspectral image classification. IEEE Trans Geosci Remote Sens, 2022, 60: 1–13

    Article  Google Scholar 

  23. Hong D, Gao L, Yao J, et al. Graph convolutional networks for hyperspectral image classification. IEEE Trans Geosci Remote Sens, 2021, 59: 5966–5978

    Article  Google Scholar 

  24. Zheng K, Gao L, Liao W, et al. Coupled convolutional neural network with adaptive response function learning for unsupervised hyperspectral super resolution. IEEE Trans Geosci Remote Sens, 2021, 59: 2487–2502

    Article  Google Scholar 

  25. Hong D, Gao L, Yokoya N, et al. More diverse means better: multimodal deep learning meets remote-sensing imagery classification. IEEE Trans Geosci Remote Sens, 2021, 59: 4340–4354

    Article  Google Scholar 

  26. Oord van den A, Li Y, Vinyals O. Representation learning with contrastive predictive coding. arXiv: 1807.03748

  27. He K, Fan H, Wu Y, et al. Momentum contrast for unsupervised visual representation learning. arXiv: 1911.05722

  28. Joseph K J, Khan S, Khan F S, et al. Towards open world object detection. In: Proceedings of the IEEE Conference Comput Vis Pattern Recognit. Nashville, 2021. 5826–5836

  29. Ben Hamida A, Benoit A, Lambert P, et al. 3-D deep learning approach for remote sensing image classification. IEEE Trans Geosci Remote Sens, 2018, 56: 4420–4434

    Article  Google Scholar 

  30. Gillis N, Kuang D, Park H. Hierarchical clustering of hyperspectral images using rank-two nonnegative matrix factorization. IEEE Trans Geosci Remote Sens, 2015, 53: 2066–2078

    Article  Google Scholar 

  31. Zhang Y, Du B, Zhang L, et al. A low-rank and sparse matrix decomposition-based mahalanobis distance method for hyperspectral anomaly detection. IEEE Trans Geosci Remote Sens, 2016, 54: 1376–1389

    Article  Google Scholar 

  32. Li S, Zhang K, Duan P, et al. Hyperspectral anomaly detection with kernel isolation forest. IEEE Trans Geosci Remote Sens, 2020, 58: 319–329

    Article  Google Scholar 

  33. Fawcett T. An introduction to ROC analysis. Pattern Recognit Lett, 2006, 27: 861–874

    Article  Google Scholar 

Download references

Author information

Authors and Affiliations

Authors

Corresponding author

Correspondence to XuDong Kang.

Additional information

This work was supported by the National Natural Science Foundation of China (Grant No. 61890962 and 61871179), the Scientific Research Project of Hunan Education Department (Grant No. 19B105), the Natural Science Foundation of Hunan Province (Grant Nos. 2019JJ50036 and 2020GK2038), the National Key Research and Development Project (Grant No. 2021YFA0715203), the Hunan Provincial Natural Science Foundation for Distinguished Young Scholars (Grant No. 2021JJ022), and the Huxiang Young Talents Science and Technology Innovation Program (Grant No. 2020RC3013).

Rights and permissions

Reprints and permissions

About this article

Check for updates. Verify currency and authenticity via CrossMark

Cite this article

Duan, P., Xie, Z., Kang, X. et al. Self-supervised learning-based oil spill detection of hyperspectral images. Sci. China Technol. Sci. 65, 793–801 (2022). https://doi.org/10.1007/s11431-021-1989-9

Download citation

  • Received:

  • Accepted:

  • Published:

  • Issue Date:

  • DOI: https://doi.org/10.1007/s11431-021-1989-9

Keywords

Navigation