Monocular Vision-Based Trout Detection on Floating Cages using YOLOV3

Trout farming is one of the most important activities, where control and good management are subject to serious errors and waste of time due to the manual way fish farmers carry out this activity. In this research work, a fish detection model is proposed in controlled spaces through video sequence a...

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Published in2022 IEEE ANDESCON pp. 1 - 5
Main Authors Calisaya, Bryan, Trujillo, Julia, Casas, Luis A. Alfaro, Choquehuayta, Wilder Nina
Format Conference Proceeding
LanguageEnglish
Published IEEE 16.11.2022
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Abstract Trout farming is one of the most important activities, where control and good management are subject to serious errors and waste of time due to the manual way fish farmers carry out this activity. In this research work, a fish detection model is proposed in controlled spaces through video sequence and Deep Learning, with the aim of counteracting the problems that arise in this activity, optimizing the detection process. Accurate detection of trout is the first step to control trout growth estimation, Biomass calculation, and have better organization and management, such as continuous monitoring of fish ponds, amount of feed to be provided to fish, classification and arrangement of fish, etc. In this work, articles referring to fish detection by different authors were reviewed, the proposed model is composed of four main stages which are: 1) data preprocessing where the videos were transformed into images of three frames per second, 2) techniques of data labeling in Make-sense software, 3) data conversion from segmentation to detection, and 4) model training and trout detection. The study results indicate that the proposed model has an accuracy of 72% to detect trout, working with a training data set of 461 images and validation data of 115 images.
AbstractList Trout farming is one of the most important activities, where control and good management are subject to serious errors and waste of time due to the manual way fish farmers carry out this activity. In this research work, a fish detection model is proposed in controlled spaces through video sequence and Deep Learning, with the aim of counteracting the problems that arise in this activity, optimizing the detection process. Accurate detection of trout is the first step to control trout growth estimation, Biomass calculation, and have better organization and management, such as continuous monitoring of fish ponds, amount of feed to be provided to fish, classification and arrangement of fish, etc. In this work, articles referring to fish detection by different authors were reviewed, the proposed model is composed of four main stages which are: 1) data preprocessing where the videos were transformed into images of three frames per second, 2) techniques of data labeling in Make-sense software, 3) data conversion from segmentation to detection, and 4) model training and trout detection. The study results indicate that the proposed model has an accuracy of 72% to detect trout, working with a training data set of 461 images and validation data of 115 images.
Author Casas, Luis A. Alfaro
Calisaya, Bryan
Trujillo, Julia
Choquehuayta, Wilder Nina
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  email: c18795@utp.edu.pe
  organization: Universidad Tecnología del Perú,Computer and Systems Engineering,Arequipa,Perú
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Snippet Trout farming is one of the most important activities, where control and good management are subject to serious errors and waste of time due to the manual way...
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SubjectTerms Aerospace electronics
Biological system modeling
Computer Vision
Deep learning
Fish
Object Detection
Training
Training data
Trout Detection
Video sequences
YOLO
Title Monocular Vision-Based Trout Detection on Floating Cages using YOLOV3
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