Back to Search Start Over

Identification and Counting of Pirapitinga Piaractus brachypomus Fingerlings Fish Using Machine Learning.

Authors :
Souza, Alene Santos
Costa, Adriano Carvalho
França, Heyde Francielle do Carmo
Nuvunga, Joel Jorge
Ferreira de Melo, Gidélia Araújo
Lima, Lessandro do Carmo
Kretschmer, Vitória de Vasconcelos
de Oliveira, Débora Ázara
Horn, Liege Dauny
Rezende, Isabel Rodrigues de
Fernandes, Marília Parreira
Reis Neto, Rafael Vilhena
Freitas, Rilke Tadeu Fonseca de
Oliveira, Rodrigo Fortunato de
Viadanna, Pedro Henrique
Vitorino, Brenno Muller
Minafra, Cibele Silva
Source :
Animals (2076-2615). Oct2024, Vol. 14 Issue 20, p2999. 10p.
Publication Year :
2024

Abstract

Simple Summary: Identification and counting of fish are relevant tools for managing the stocking, harvesting, and marketing of farmed fish. Researchers have used convolutional networks for these purposes and employed various approaches to improve network learning. Batch normalization is one technique that enhances network stability and accuracy. The study aimed to evaluate machine learning for identifying and counting pirapitinga Piaractus brachypomus fry with different batch sizes. The researchers used one thousand photographic images of Pirapitinga fingerlings, labeled with bounding boxes. They trained the adapted convolutional network model with batch normalization layers inserted at the end of each convolution block. The training involved one hundred and fifty epochs, with batch sizes for normalization set to 5, 10, and 20. Identifying and counting fish are crucial for managing stocking, harvesting, and marketing of farmed fish. Researchers have used convolutional networks for these tasks and explored various approaches to enhance network learning. Batch normalization is one technique that improves network stability and accuracy. This study aimed to evaluate machine learning for identifying and counting pirapitinga Piaractus brachypomus fry with different batch sizes. The researchers used one thousand photographic images of Pirapitinga fingerlings, labeled with bounding boxes. They trained the adapted convolutional network model with batch normalization layers added at the end of each convolution block. They set the training to one hundred and fifty epochs and tested batch sizes of 5, 10, and 20. Furthermore, they measured network performance using precision, recall, and mAP@0.5. Models with smaller batch sizes performed less effectively. The training with a batch size of 20 achieved the best performance, with a precision of 96.74%, recall of 95.48%, mAP@0.5 of 97.08%, and accuracy of 98%. This indicates that larger batch sizes improve accuracy in detecting and counting pirapitinga fry across different fish densities. [ABSTRACT FROM AUTHOR]

Details

Language :
English
ISSN :
20762615
Volume :
14
Issue :
20
Database :
Academic Search Index
Journal :
Animals (2076-2615)
Publication Type :
Academic Journal
Accession number :
180530400
Full Text :
https://doi.org/10.3390/ani14202999