A Deep CNN-Based Salinity and Freshwater Fish Identification and Classification Using Deep Learning and Machine Learning

Concerning the oversight and safeguarding of aquatic environments, it is necessary to ascertain the quantity of fish, their size, and their distribution. Many deep learning (DL), artificial intelligence (AI), and machine learning (ML) techniques have been developed to oversee and safeguard the fish...

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Veröffentlicht in:Sustainability 2024-09, Vol.16 (18), p.7933
Hauptverfasser: Rahman, Wahidur, Rahman, Mohammad Motiur, Mozumder, Md Ariful Islam, Sumon, Rashadul Islam, Chelloug, Samia Allaoua, Alnashwan, Rana Othman, Muthanna, Mohammed Saleh Ali
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container_issue 18
container_start_page 7933
container_title Sustainability
container_volume 16
creator Rahman, Wahidur
Rahman, Mohammad Motiur
Mozumder, Md Ariful Islam
Sumon, Rashadul Islam
Chelloug, Samia Allaoua
Alnashwan, Rana Othman
Muthanna, Mohammed Saleh Ali
description Concerning the oversight and safeguarding of aquatic environments, it is necessary to ascertain the quantity of fish, their size, and their distribution. Many deep learning (DL), artificial intelligence (AI), and machine learning (ML) techniques have been developed to oversee and safeguard the fish species. Still, all the previous work had some limitations, such as a limited dataset, only binary class categorization, only employing one technique (ML/DL), etc. Therefore, in the proposed work, the authors develop an architecture that will eliminate all the limitations. Both DL and ML techniques were used in the suggested framework to identify and categorize multiple classes of the salinity and freshwater fish species. Two different datasets of fish images with thirteen fish species were employed in the current research. Seven CNN architectures were implemented to find out the important features of the fish images. Then, seven ML classifiers were utilized in the suggested work to identify the binary class (freshwater and salinity) of fish species. Following that, the multiclass classification of thirteen fish species was evaluated through the ML algorithms, where the present model diagnosed the freshwater or salinity fish in the specific fish species. To achieve the primary goals of the proposed study, several assessments of the experimental data are provided. The results of the investigation indicated that DenseNet121, EfficientNetB0, ResNet50, VGG16, and VGG19 architectures of the CNN with SVC ML technique achieved 100% accuracy, F1-score, precision, and recall for binary classification (freshwater/salinity) of fish images. Additionally, the ResNet50 architecture of the CNN with SVC ML technique achieved 98.06% and 100% accuracy for multiclass classification (freshwater and salinity fish species) of fish images. However, the proposed pipeline can be very effective in sustainable fish management in fish identification and classification.
doi_str_mv 10.3390/su16187933
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source MDPI - Multidisciplinary Digital Publishing Institute; Elektronische Zeitschriftenbibliothek - Frei zugängliche E-Journals
subjects Accuracy
Aquaculture
Artificial intelligence
Automation
Classification
Commercial fishing
Comparative analysis
Consumption
Deep learning
Fish
Fisheries
Fishes
Fishing
Food
Identification
Identification and classification
Machine learning
Measurement
Neural networks
Salinity
Surveillance
title A Deep CNN-Based Salinity and Freshwater Fish Identification and Classification Using Deep Learning and Machine Learning
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