Deep Neural Networks for Marine Debris Detection in Sonar Images
Matias Valdenegro-Toro

TL;DR
This paper evaluates deep neural networks for detecting marine debris in sonar images, demonstrating their superiority over traditional methods and providing insights into factors affecting detection performance.
Contribution
It offers a comprehensive evaluation of DNNs for marine debris detection in sonar images, including dataset creation, performance comparison, and analysis of sample complexity and object size effects.
Findings
DNNs outperform traditional methods in marine debris detection tasks.
Significant improvements in matching and detection proposal tasks with DNNs.
Insights into how sample complexity and object size influence detection accuracy.
Abstract
Garbage and waste disposal is one of the biggest challenges currently faced by mankind. Proper waste disposal and recycling is a must in any sustainable community, and in many coastal areas there is significant water pollution in the form of floating or submerged garbage. This is called marine debris. Submerged marine debris threatens marine life, and for shallow coastal areas, it can also threaten fishing vessels [I\~niguez et al. 2016, Renewable and Sustainable Energy Reviews]. Submerged marine debris typically stays in the environment for a long time (20+ years), and consists of materials that can be recycled, such as metals, plastics, glass, etc. Many of these items should not be disposed in water bodies as this has a negative effect in the environment and human health. This thesis performs a comprehensive evaluation on the use of DNNs for the problem of marine debris detection in…
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Taxonomy
TopicsAdvanced Neural Network Applications · Microplastics and Plastic Pollution · Water Quality Monitoring Technologies
