Abstract

Marine oil spills are an emergency of great harm and have become a hot topic in marine environmental monitoring research. Optical remote sensing is an important means to monitor marine oil spills. Clouds, weather, and light control the amount of available data, which often limit feature characterization using a single classifier and therefore difficult to accurate monitoring of marine oil spills. In this paper, we develop a decision fusion algorithm to integrate deep learning methods and shallow learning methods based on multi-scale features for improving oil spill detection accuracy in the case of limited samples. Based on the multi-scale features after wavelet transform, two deep learning methods and two classical shallow learning algorithms are used to extract oil slick information from hyperspectral oil spill images. The decision fusion algorithm based on fuzzy membership degree is introduced to fuse multi-source oil spill information. The research shows that oil spill detection accuracy using the decision fusion algorithm is higher than that of the single detection algorithms. It is worth noting that oil spill detection accuracy is affected by different scale features. The decision fusion algorithm under the first-level scale features can further improve the accuracy of oil spill detection. The overall classification accuracy of the proposed method is 91.93%, which is 2.03%, 2.15%, 1.32%, and 0.43% higher than that of SVM, DBN, 1D-CNN, and MRF-CNN algorithms, respectively.

Highlights

  • Marine oil spill accidents have occurred frequently in recent years, causing serious harm to the marine environment

  • The detection results with different scales of convolutional neural network (CNN) and Deep Belief Network (DBN) algorithms can keep the continuity of the oil film on the sea surface well

  • AISA + hyperspectral image and the multi-scale features after wavelet transform, this paper uses two deep learning methods and two shallow learning methods to extract the oil spill information at three different scales

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Summary

Introduction

Marine oil spill accidents have occurred frequently in recent years, causing serious harm to the marine environment. 4.9 million barrels, and the polluted seawater area was at least 10,000 square kilometers. The accident had a devastating impact on the marine ecological environment and biological resources in the Gulf of Mexico, which was the most serious oil spill accident in the history of the United States. More than 7000 tons of crude oil leaked from the blowout accident of Penglai 19-3C platform in 2011 [2], polluting 6200 square kilometers of seawater, resulting in serious pollution damage to the marine ecological environment of the Bohai Sea. The cost of compensation for marine ecological loss caused by the oil spill accident reached

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