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Self-supervised feature learning for rapid processing of marine imagery. Fast and reliable quantitative estimates of marine environmental health are needed for scientific studies, design and managemen

The University of Sydney — Linkage Projects
Amount
Up to $541,678
Closes
Tuesday 31 August 2027
Status
unknown
Type
open opportunity
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Description

Self-supervised feature learning for rapid processing of marine imagery. Fast and reliable quantitative estimates of marine environmental health are needed for scientific studies, design and management of protected areas, and regulatory compliance of industrial activity in the ocean. Australia is collecting seafloor images at increasing rates but expert annotations are not keeping up, meaning that typical machine learning approaches struggle. This project will develop self-supervised techniques that use large amounts of unlabeled data to enhance performance. Our design takes advantage of additional information available for marine imagery such as geolocation and remote sensing context. We will explore how these representations can guide additional sampling and improve performance in classification tasks.. Scheme: Linkage Projects. Field: 4611 - Machine Learning. Lead: Prof Stefan Williams

Categories
healthregenerativeenterpriseeducation
Target Recipients
researchersuniversities

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Last verified: Monday 2 March 2026
Added: Saturday 28 February 2026