Convolutional Neural Networks in the Inspection of Serrasalmids (Characiformes) Fingerlings

Author:

Fernandes Marília Parreira1ORCID,Costa Adriano Carvalho1,França Heyde Francielle do Carmo1,Souza Alene Santos1ORCID,Viadanna Pedro Henrique de Oliveira2ORCID,Lima Lessandro do Carmo1,Horn Liege Dauny1,Pierozan Matheus Barp1,Rezende Isabel Rodrigues de1,Medeiros Rafaella Machado dos S. de1,Braganholo Bruno Moraes1,Silva Lucas Oliveira Pereira da1,Nacife Jean Marc1ORCID,Pinho Costa Kátia Aparecida de1ORCID,Silva Marco Antônio Pereira da1ORCID,Oliveira Rodrigo Fortunato de1ORCID

Affiliation:

1. Federal Institute of Education, Science and Technology of Goiás (IF Goiano)—Campus Rio Verde, Goiana South Highway, Km 01, Rio Verde 75901-970, GO, Brazil

2. School of Biological Sciences, College of Arts and Sciences, Washington State University, Pullman, WA 99163, USA

Abstract

Aquaculture produces more than 122 million tons of fish globally. Among the several economically important species are the Serrasalmidae, which are valued for their nutritional and sensory characteristics. To meet the growing demand, there is a need for automation and accuracy of processes, at a lower cost. Convolutional neural networks (CNNs) are a viable alternative for automation, reducing human intervention, work time, errors, and production costs. Therefore, the objective of this work is to evaluate the efficacy of convolutional neural networks (CNNs) in counting round fish fingerlings (Serrasalmidae) at different densities using 390 color photographs in an illuminated environment. The photographs were submitted to two convolutional neural networks for object detection: one model was adapted from a pre-trained CNN and the other was an online platform based on AutoML. The metrics used for performance evaluation were precision (P), recall (R), accuracy (A), and F1-Score. In conclusion, convolutional neural networks (CNNs) are effective tools for detecting and counting fish. The pre-trained CNN demonstrated outstanding performance in identifying fish fingerlings, achieving accuracy, precision, and recall rates of 99% or higher, regardless of fish density. On the other hand, the AutoML exhibited reduced accuracy and recall rates as the number of fish increased.

Funder

IF Goiano

FAPEG

CNPQ

Publisher

MDPI AG

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