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Variational quantum enhanced deep transfer learning for small underwater aqua species image classification
by
A, Sugunapriya
, S, Markkandan
in
639/166/987
/ 704/172/4081
/ 704/829/826
/ Algorithms
/ Aquaculture
/ Artificial intelligence
/ Automation
/ Biodiversity
/ Biomass
/ Classification
/ Computer applications
/ Datasets
/ Deep learning
/ Ecosystem analysis
/ Fisheries management
/ Humanities and Social Sciences
/ Light
/ Localization
/ Machine learning
/ Marine ecosystems
/ Morphology
/ multidisciplinary
/ Neural networks
/ Quantum learning
/ Science
/ Science (multidisciplinary)
/ Shellfish
/ Sustainable fisheries
/ Transfer learning
/ Underwater
/ Variational quantum circuit
2025
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Variational quantum enhanced deep transfer learning for small underwater aqua species image classification
by
A, Sugunapriya
, S, Markkandan
in
639/166/987
/ 704/172/4081
/ 704/829/826
/ Algorithms
/ Aquaculture
/ Artificial intelligence
/ Automation
/ Biodiversity
/ Biomass
/ Classification
/ Computer applications
/ Datasets
/ Deep learning
/ Ecosystem analysis
/ Fisheries management
/ Humanities and Social Sciences
/ Light
/ Localization
/ Machine learning
/ Marine ecosystems
/ Morphology
/ multidisciplinary
/ Neural networks
/ Quantum learning
/ Science
/ Science (multidisciplinary)
/ Shellfish
/ Sustainable fisheries
/ Transfer learning
/ Underwater
/ Variational quantum circuit
2025
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Variational quantum enhanced deep transfer learning for small underwater aqua species image classification
by
A, Sugunapriya
, S, Markkandan
in
639/166/987
/ 704/172/4081
/ 704/829/826
/ Algorithms
/ Aquaculture
/ Artificial intelligence
/ Automation
/ Biodiversity
/ Biomass
/ Classification
/ Computer applications
/ Datasets
/ Deep learning
/ Ecosystem analysis
/ Fisheries management
/ Humanities and Social Sciences
/ Light
/ Localization
/ Machine learning
/ Marine ecosystems
/ Morphology
/ multidisciplinary
/ Neural networks
/ Quantum learning
/ Science
/ Science (multidisciplinary)
/ Shellfish
/ Sustainable fisheries
/ Transfer learning
/ Underwater
/ Variational quantum circuit
2025
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Variational quantum enhanced deep transfer learning for small underwater aqua species image classification
Journal Article
Variational quantum enhanced deep transfer learning for small underwater aqua species image classification
2025
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Overview
Precise underwater classification of small aquaculture species is essential for sustainable fisheries management, biodiversity monitoring, and automated marine ecosystem analysis. But it is still a challenging task owing to underwater image distortions from poor visibility, lighting changes, occlusions, and the high computational complexity of traditional deep learning models. To address these issues, we propose a Lightweight Variational Quantum Enhanced Deep Transfer Learning framework. This hybrid deep transfer learning model integrates pretrained classical convolutional neural networks with variational quantum circuits to improve feature representation and classification efficiency. The framework is designed to reduce computational complexity while enhancing accuracy by leveraging quantum feature extraction techniques. Experimental evaluations on curated small aquafarming species dataset demonstrate that the proposed approach achieves high classification accuracy (up to 99.25%) with significantly fewer parameters and floating-point operations, indicating its potential for resource-constrained applications. Ablation studies further validate the impact of quantum layers on model performance. These results suggest that quantum deep transfer learning models can offer a promising direction for robust and efficient underwater species classification.
Publisher
Nature Publishing Group UK,Nature Publishing Group,Nature Portfolio
Subject
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