On-board classification of underwater images using hybrid classical-quantum CNN based method
Sreeraj Rajan Warrier, D Sri Harshavardhan Reddy, Sriya Bada, Rohith Achampeta, Sebastian Uppapalli, Jayasri Dontabhaktuni

TL;DR
This paper introduces a hybrid classical-quantum machine learning approach for real-time underwater image classification on autonomous underwater vehicles, demonstrating improved efficiency and reduced data requirements over classical methods.
Contribution
It is the first to apply quantum-classical hybrid methods for onboard underwater object recognition, showing significant efficiency gains and smaller training datasets.
Findings
Hybrid methods achieve over 65% efficiency.
Run-time reduced by one-third compared to classical methods.
Requires 50% less training data.
Abstract
Underwater images taken from autonomous underwater vehicles (AUV's) often suffer from low light, high turbidity, poor contrast, motion-blur and excessive light scattering and hence require image enhancement techniques for object recognition. Machine learning methods are being increasingly used for object recognition under such adverse conditions. These enhanced object recognition methods of images taken from AUV's has potential applications in underwater pipeline and optical fibre surveillance, ocean bed resource extraction, ocean floor mapping, underwater species exploration, etc. While the classical machine learning methods are very efficient in terms of accuracy, they require large datasets and high computational time for image classification. In the current work, we use quantum-classical hybrid machine learning methods for real-time under-water object recognition on-board an AUV for…
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Taxonomy
TopicsAdvanced Neural Network Applications · Water Quality Monitoring Technologies · Machine Learning and ELM
