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AI algorithm combines different satellite imagery for precise oil spill detection

AI breakthrough transforms oil spill detection
High-precision oil spill detection now possible thanks to new JCU research. Credit: Keri Jackson from Pixabay

The study published in is the first to use AI to combine two types of satellite imagery to detect the location, thickness and type of oil spill in oceans, providing a ground-breaking tool for fast and accurate response plans.

"This is a major step forward in oil spill detection, and it will allow us to detect spills more accurately and tell whether the oil is thick or thin," said lead researcher and JCU Ph.D. candidate Quanwei Liu.

"This is vital for giving decision makers a clearer picture than ever before when planning how to respond."

When crude into the ocean, it disperses due to the action of currents, wind, and waves, increasing the extent of the contamination. For example, the leaked millions of barrels of oil from around 1.5 km below the sea surface, to eventually cover roughly 12,000 km2 of ocean.

Detecting and monitoring oil spills using satellite imagery has proven essential for addressing and mitigating oil spill hazards. However, combining the data of different for more accurate detection has proven challenging, until now.

"We combined inputs from two types of satellite: the (SAR) and the hyperspectral imaging satellite (HSI)," explains JCU's Dr. Kevin Huang, who supervised the study.

"SAR can detect the differences in waves and surface roughness of the ocean. If there's oil on the surface of the water, it'll make the surface smoother. But alone, it often confuses thin versus thick oil.

"HSI acts like a super-detailed color sensor that helps determine what the spilled oil material is, but it doesn't generalize as widely.

"Fusing them captures the best of both—cleaner spill outlines and stronger oil-type recognition—beating other approaches."

Practically, the researchers suggest a simple response plan: use SAR for fast, large-area detection following a spill, then apply the SAR+HSI fusion inside the detected area to estimate oil thickness/type and guide clean-up decisions.

Both scientists argue that this approach is not only important for addressing oil spills but could also prove valuable for future monitoring in a wide range of environmental contexts.

"We want to further apply our and remote sensing research to other monitoring applications, like , forests and disasters, to benefit societies and communities," Dr. Huang said.

More information: Quanwei Liu et al, Enhancing oil spill detection with controlled random sampling: A multimodal fusion approach using SAR and HSI imagery, Remote Sensing Applications: Society and Environment (2025).

Provided by James Cook University

Citation: AI algorithm combines different satellite imagery for precise oil spill detection (2025, October 22) retrieved 9 November 2025 from /news/2025-10-ai-algorithm-combines-satellite-imagery.html
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