dc.description.abstract |
As urbanization advances, technological integration has become a necessity for the
sustainable management of diverse ecosystems, where the fish world or the aquatic
realm is no exception. This study introduces "FishNet28," an approach aiming to
classify Bangladeshi indigenous fish species and decrease the information gap in
Bangladesh. The primary objectives of FishNet28 encompass dataset construction,
accurate species classification, custom machine learning model development, and the
creation of a user-friendly mobile application, addressing critical gaps in fish
identification methodologies and knowledge dissemination systems. At present, many
indigenous fish species in Bangladesh are on the verge of extinction due to overfishing
or false identification. Our methodology for FishNet28 addresses these fish
identification gaps by involving the collection of a large dataset of fish images and
classifying them with the help of machine learning and deep learning techniques. This
study compares the performance of four pre-trained models: DenseNet201, Xception,
ResNet50V2, and InceptionV3. Each model was classified, and their performance
metrics were recorded for comparative analysis. Additionally, a custom layered
DenseNet201 model was developed and evaluated. The custom FishNet28 model
demonstrated superior performance with a training accuracy of 99.53% and a validation
accuracy of 99.86%, highlighting its potential for accurate species classification in
practical applications. |
en_US |