An image classifier for underwater fish detection using classification tree-artificial neural network hybrid
Fish detection using imaging technologies and computer vision systems is considered as an effective tool in fish monitoring for increasing the production to satisfy future global demands. This persistent tasks, with image classification as one of its subtasks, encounters challenges due to the comple...
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oai:animorepository.dlsu.edu.ph:faculty_research-28252021-07-27T07:33:32Z An image classifier for underwater fish detection using classification tree-artificial neural network hybrid Almero, Vincent Jan D. De La Salle University, Manila Sybingco, Edwin Dadios, Elmer P. Fish detection using imaging technologies and computer vision systems is considered as an effective tool in fish monitoring for increasing the production to satisfy future global demands. This persistent tasks, with image classification as one of its subtasks, encounters challenges due to the complex nature of underwater images. A proposed approach to address this subtask was to create a hybrid image classification model from classification tree and artificial neural network. The classification tree component performed feature selection to extract a reduced representation of the fundamental dataset, derived from a series of acquired and processed underwater images in a land-based aquaculture setup. This said representation was then fed to a feedforward artificial neural network to develop such model. The best configuration of this hybrid model was determined, based on learning time and cross entropy, and was compared to a classification tree and an artificial neural network, both developed from the fundamental dataset, based on training and testing accuracies. The best performing hybrid model, composed of 100 hidden neurons in the artificial neural network component, achieved training and testing accuracies of 93.6% and 78.0%, respectively, hence, providing a competitive solution to the image classification in fish detection problem. © 2020 IEEE. 2020-10-01T07:00:00Z text text/html https://animorepository.dlsu.edu.ph/faculty_research/1826 https://animorepository.dlsu.edu.ph/context/faculty_research/article/2825/type/native/viewcontent Faculty Research Work Animo Repository Fishes—Detection Neural networks (Computer science) Fishes—Classification Computer vision Electrical and Computer Engineering Electrical and Electronics Systems and Communications |
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Fishes—Detection Neural networks (Computer science) Fishes—Classification Computer vision Electrical and Computer Engineering Electrical and Electronics Systems and Communications Almero, Vincent Jan D. De La Salle University, Manila Sybingco, Edwin Dadios, Elmer P. An image classifier for underwater fish detection using classification tree-artificial neural network hybrid |
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Fish detection using imaging technologies and computer vision systems is considered as an effective tool in fish monitoring for increasing the production to satisfy future global demands. This persistent tasks, with image classification as one of its subtasks, encounters challenges due to the complex nature of underwater images. A proposed approach to address this subtask was to create a hybrid image classification model from classification tree and artificial neural network. The classification tree component performed feature selection to extract a reduced representation of the fundamental dataset, derived from a series of acquired and processed underwater images in a land-based aquaculture setup. This said representation was then fed to a feedforward artificial neural network to develop such model. The best configuration of this hybrid model was determined, based on learning time and cross entropy, and was compared to a classification tree and an artificial neural network, both developed from the fundamental dataset, based on training and testing accuracies. The best performing hybrid model, composed of 100 hidden neurons in the artificial neural network component, achieved training and testing accuracies of 93.6% and 78.0%, respectively, hence, providing a competitive solution to the image classification in fish detection problem. © 2020 IEEE. |
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text |
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Almero, Vincent Jan D. De La Salle University, Manila Sybingco, Edwin Dadios, Elmer P. |
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Almero, Vincent Jan D. De La Salle University, Manila Sybingco, Edwin Dadios, Elmer P. |
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Almero, Vincent Jan D. |
title |
An image classifier for underwater fish detection using classification tree-artificial neural network hybrid |
title_short |
An image classifier for underwater fish detection using classification tree-artificial neural network hybrid |
title_full |
An image classifier for underwater fish detection using classification tree-artificial neural network hybrid |
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An image classifier for underwater fish detection using classification tree-artificial neural network hybrid |
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An image classifier for underwater fish detection using classification tree-artificial neural network hybrid |
title_sort |
image classifier for underwater fish detection using classification tree-artificial neural network hybrid |
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Animo Repository |
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2020 |
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https://animorepository.dlsu.edu.ph/faculty_research/1826 https://animorepository.dlsu.edu.ph/context/faculty_research/article/2825/type/native/viewcontent |
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