dc.description.abstract |
This study uses deep learning techniques to provide a novel method for local fish
understanding in Bangladesh. The following six native fish species are represented in the
extensive dataset that was painstakingly gathered: 'Channa punctata (Taki),' 'Anabas (Koi
macch),' 'Puntius (Puti),' 'Amblypharygodon (Mola macch),' 'Batasio tengana (Tengra),'
and 'Ompok bimaculatus (Pabda).' The dataset was deliberately chosen to guarantee
inclusion and diversity of different fish species that are frequently seen in Bangladeshi
seas. We used cutting-edge deep learning methods, such as "InceptionV3," "Xception,"
"ResNet50," "VGG19," and a specially created Convolutional Neural Network (or
"CNN"), to train and assess the fish detection model. These algorithms were selected based
on their effectiveness in picture recognition applications and their capacity to extract
complex features from various datasets. After extensive testing and training, our findings
show that 'InceptionV3' outperforms all previous algorithms, obtaining a remarkable
accuracy of 98.51%. The exceptional performance of 'InceptionV3' highlights its
effectiveness in identifying the distinctive features of native fish species found in
Bangladesh, highlighting its potential for useful applications in fish species identification.
This work not only adds an important dataset to the field, but it also emphasizes how
important it is to select the right deep learning method for the given local environment. The
accomplishment of 'InceptionV3' in this particular situation provides opportunities for the
use of precise and trustworthy fish detection systems, which are essential for managing
fisheries, tracking biodiversity, and promoting ecological conservation in Bangladesh's
aquatic environments. |
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