robmarkcole/kaggle-ships-in-satellite-imagery-with-YOLOv8
Applying YOLOv8 to Kaggle Ships in Google Earth dataset
This project helps maritime surveillance, logistics, or environmental monitoring professionals automatically identify ships in satellite images. It takes raw Google Earth satellite imagery as input and outputs the same images with bounding boxes drawn around detected ships. This is useful for anyone who needs to quickly count or locate vessels from aerial perspectives without manual review.
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Use this if you need an automated way to detect and count ships in high-resolution satellite imagery, especially over open ocean.
Not ideal if you need to detect very small boats or differentiate between various types of vessels, as the current model might miss smaller targets and is not designed for classification.
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Apache-2.0
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Last pushed
Feb 13, 2023
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