Improving Buoy Detection with Deep Transfer Learning for Mussel Farm Automation
Carl McMillan, Junhong Zhao, Bing Xue, Ross Vennell, Mengjie Zhang

TL;DR
This paper presents a deep transfer learning approach to improve buoy detection accuracy and robustness in mussel farm monitoring, leveraging diverse real-world data and pre-trained models for enhanced aquaculture management.
Contribution
It introduces a novel application of transfer learning with deep neural networks for buoy detection in mussel farms, demonstrating improved performance over traditional methods.
Findings
Deep learning significantly improves buoy detection accuracy.
Transfer learning enhances model robustness across weather conditions.
Model generalizes well to diverse real-world scenarios.
Abstract
The aquaculture sector in New Zealand is experiencing rapid expansion, with a particular emphasis on mussel exports. As the demands of mussel farming operations continue to evolve, the integration of artificial intelligence and computer vision techniques, such as intelligent object detection, is emerging as an effective approach to enhance operational efficiency. This study delves into advancing buoy detection by leveraging deep learning methodologies for intelligent mussel farm monitoring and management. The primary objective centers on improving accuracy and robustness in detecting buoys across a spectrum of real-world scenarios. A diverse dataset sourced from mussel farms is captured and labeled for training, encompassing imagery taken from cameras mounted on both floating platforms and traversing vessels, capturing various lighting and weather conditions. To establish an effective…
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