Scopus Indexed Publications

Paper Details


Title
A Deep Learning Approach to Recognize Bangladeshi Shrimp Species
Author
Md. Mehedi Hasan, Jubiria Subrin Nishi, Mohammad Monirul Islam,
Email
Abstract

Shrimp, the most popular shellfish in Bangladesh, is a good source of protein, minerals, vitamin D, and iodine that promote a healthy body and balanced nutrition. In Bangladesh shrimp is referred to as white gold. It consumes about 70% of exported agricultural food. In our country, about 56 species of shrimp are found. Most people do not know all of the species very well. Ordinary people even the fisherman are sometimes confused about different species because of looking like the same. To solve the problem in this work we introduced an intelligence mahine that can help people to concede Shrimp species accurately. We expect this work also help the export sector to differentiate the shrimp species monitoring. To achieve the goal, we build a custom CNN algorithm for image processing and feature extraction. We build three different CNN architectures and differentiate them by hyperparameter and number of convolutional layers. Model 1 and Model 3 both obtain an accuracy of 99.01%, however Model 3 was chosen as the final model for Computer Vision integration. Though both models generated the best accuracy why do we use model 3 as the final model? In this work, we will also describe with appropriate reason.


Keywords
"Image Processing , Deep Learning , Neural Networks , Shrimp Identification , recognition"
Journal or Conference Name
2023 14th International Conference on Computing Communication and Networking Technologies, ICCCNT 2023
Publication Year
2023
Indexing
scopus