Sparse Coral Classification Using Deep Convolutional Neural Networks
Mohamed Elawady

TL;DR
This paper develops a deep learning-based sparse classification method using CNNs and feature descriptors to identify coral species in underwater images, aiding autonomous coral reef repair.
Contribution
It introduces a novel CNN-based coral classification approach combining shape and texture features with underwater image enhancement techniques.
Findings
Effective coral classification achieved with CNNs and feature descriptors.
Improved image quality through underwater preprocessing enhances classification accuracy.
Validated on two distinct coral datasets with promising results.
Abstract
Autonomous repair of deep-sea coral reefs is a recent proposed idea to support the oceans ecosystem in which is vital for commercial fishing, tourism and other species. This idea can be operated through using many small autonomous underwater vehicles (AUVs) and swarm intelligence techniques to locate and replace chunks of coral which have been broken off, thus enabling re-growth and maintaining the habitat. The aim of this project is developing machine vision algorithms to enable an underwater robot to locate a coral reef and a chunk of coral on the seabed and prompt the robot to pick it up. Although there is no literature on this particular problem, related work on fish counting may give some insight into the problem. The technical challenges are principally due to the potential lack of clarity of the water and platform stabilization as well as spurious artifacts (rocks, fish, and…
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Taxonomy
TopicsCoral and Marine Ecosystems Studies · Underwater Vehicles and Communication Systems · Water Quality Monitoring Technologies
