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Underwater Fish Detection and Counting Using Mask Regional Convolutional Neural Network

Teh Hong Khai, Siti Norul Huda Sheikh Abdullah, Mohammad Kamrul Hasan, Ahmad Tarmizi

Year
2022
Citations
60
Access
Open access

Abstract

Fish production has become a roadblock to the development of fish farming, and one of the issues encountered throughout the hatching process is the counting procedure. Previous research has mainly depended on the use of non-machine learning-based and machine learning-based counting methods and so was unable to provide precise results. In this work, we used a robotic eye camera to capture shrimp photos on a shrimp farm to train the model. The image data were classified into three categories based on the density of shrimps: low density, medium density, and high density. We used the parameter calibration strategy to discover the appropriate parameters and provided an improved Mask Regional Convolutional Neural Network (Mask R-CNN) model. As a result, the enhanced Mask R-CNN model can reach an accuracy rate of up to 97.48%.

Keywords

Convolutional neural networkShrimpUnderwaterArtificial intelligenceComputer scienceCalibrationArtificial neural networkProcess (computing)Fish <Actinopterygii>Computer vision

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