Seattle-Aquarium/underwater-auto-image-encoder
An automated machine learning pipeline that replaces manual image editing for underwater GoPro images captured during ROV surveys
This tool automatically enhances underwater GoPro images captured during ROV surveys, transforming raw GPR files into high-quality images that match the clarity of manually edited photos. It's designed for marine biologists, oceanographers, and anyone involved in underwater research who needs to quickly process and analyze visual data without extensive manual photo editing.
Use this if you need to efficiently process large batches of underwater images from ROV surveys, transforming raw GoPro GPR files into visually enhanced images for scientific analysis or reporting.
Not ideal if your primary need is general-purpose photo editing for images not from underwater ROV surveys, or if you require highly specific, artistic image manipulations.
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8
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2
Language
Python
License
—
Category
Last pushed
Jan 29, 2026
Commits (30d)
0
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