Enhancing Fish Auction with Deep Learning and Computer Vision: Automated Caliber and Species Classification

Author:

Jareño Javier1ORCID,Bárcena-González Guillermo1ORCID,Castro-Gutiérrez Jairo23ORCID,Cabrera-Castro Remedios24ORCID,Galindo Pedro L.1ORCID

Affiliation:

1. Computer Science Department, School of Engineering, University of Cádiz, Puerto Real, 11519 Cádiz, Spain

2. Biology Department, Faculty of Marine and Environmental Science, Campus Universitario de Puerto Real, University of Cádiz, Puerto Real, 11510 Cádiz, Spain

3. Department of Agroforestry Sciences, ETSI School of Engineering, University of Huelva, 21007 Huelva, Spain

4. Instituto Universitario de Investigación Marina (INMAR), Campus de Excelencia Internacional del Mar (CEIMAR), University of Cádiz, Puerto Real, 11510 Cádiz, Spain

Abstract

The accurate labeling of species and size of specimens plays a pivotal role in fish auctions conducted at fishing ports. These labels, among other relevant information, serve as determinants of the objectivity of the auction preparation process, underscoring the indispensable nature of a reliable labeling system. Historically, this task has relied on manual processes, rendering it vulnerable to subjective interpretations by the involved personnel, therefore compromising the value of the merchandise. Consequently, the digitization and implementation of an automated labeling system are proposed as a viable solution to this ongoing challenge. This study presents an automatic system for labeling species and size, leveraging pre-trained convolutional neural networks. Specifically, the performance of VGG16, EfficientNetV2L, Xception, and ResNet152V2 networks is thoroughly examined, incorporating data augmentation techniques and fine-tuning strategies. The experimental findings demonstrate that for species classification, the EfficientNetV2L network excels as the most proficient model, achieving an average F-Score of 0.932 in its automatic mode and an average F-Score of 0.976 in its semi-automatic mode. Concerning size classification, a semi-automatic model is introduced, where the Xception network emerges as the superior model, achieving an average F-Score of 0.949.

Funder

Ministerio de Agricultura, Pesca y Alimentación—Fondos NextGenerationEU

Junta de Andalucía—Grupos PAI

Publisher

MDPI AG

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