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Hyperspectral Remote Sensing Benchmark Database for Oil Spill Detection with an Isolation Forest-Guided Unsupervised Detector

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DataCite Commons2023-10-31 更新2025-04-16 收录
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https://ieee-dataport.org/documents/hyperspectral-remote-sensing-benchmark-database-oil-spill-detection-isolation-forest
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In the wake of marine oil exploration and transportation, the accidents of oil spills have occurredfrequently around the world, which leads to the severe pollution of the marine environment and thehuge damage of coastal species [1–6]. On April 20, 2010, the explosion of Deepwater Horizon oildrilling platform led to a severe leakage. Million barrels of oil polluted the Gulf of Mexico with thearea of about 10,000 square kilometers [7, 8]. Due to this accident, the marine ecosystems, such as fishand seabirds, have been seriously destroyed. On June 4, 2011, the Penglai 19-3 oilfield in Bohai Bay,Northeast China, witnessed a serious oil spill incident, which caused the leak of more than 7 thousandtons of oil into the sea [9]. The polluted area was almost 6200 square kilometers. If the oil would notbe timely monitored after the leakage, the oil slick would be washed onto the coast by the sea waves.This situation would pose a huge threat to coastal aquaculture fishery resources and human health.Therefore, it is of great importance to effectively detect oil spills on the sea surface to monitor thedistribution, impact, and volume of oil spills. Hyperspectral data, which provides rich spectral informationfrom the visible to the infrared spectrum, are a good candidate for oil spill detection.
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IEEE DataPort
创建时间:
2023-10-31
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