FRESHWATER FISH SPECIES CLASSIFICATION USING DEEP CNN FEATURES

Deep-Learning and image processing have shown excellent performance in automated fish image classification and recognition task in recent years. In this research paper, we have come up with a novel deep-learning method based on CNN features extracted from deeper layer of a pretrained CNN architectur...

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Bibliographic Details
Published in:ICTACT journal on image and video processing Vol. 12; no. 4; pp. 2721 - 2729
Main Authors: Jayashree Deka, Shakuntala Laskar, Bikramaditya Baklial
Format: Journal Article
Language:English
Published: ICT Academy of Tamil Nadu 01-05-2022
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Summary:Deep-Learning and image processing have shown excellent performance in automated fish image classification and recognition task in recent years. In this research paper, we have come up with a novel deep-learning method based on CNN features extracted from deeper layer of a pretrained CNN architecture for automatic classification of eleven (11) indigenous fresh water fish species from India. We have utilized top three layers of a pretrained Resnet-50 model to extract features from fish images and an “ones for all SVM” classifier to train and test images based on the CNN features. This paper reports an exceptional result in overall classification performance on Fish-Pak dataset and on our own dataset. The proposed framework yields overall classification accuracy, precision and recall of 100% on our own data and a maximum of 98.74% accuracy on Fish-Pak dataset which is the best till date.
ISSN:0976-9099
0976-9102
DOI:10.21917/ijivp.2022.0386