Detection of Tomato Ripening Stages using Yolov3-tiny
- URL: http://arxiv.org/abs/2302.00164v1
- Date: Wed, 1 Feb 2023 00:57:58 GMT
- Title: Detection of Tomato Ripening Stages using Yolov3-tiny
- Authors: Gerardo Antonio Alvarez Hern\'andez, Juan Carlos Olguin, Juan Irving
Vasquez, Abril Valeria Uriarte, Maria Claudia Villica\~na Torres
- Abstract summary: We use a neural network-based model for tomato classification and detection.
Our experiments showed an f1-score of 90.0% in the localization and classification of ripening stages in a custom dataset.
- Score: 0.0
- License: http://arxiv.org/licenses/nonexclusive-distrib/1.0/
- Abstract: One of the most important agricultural products in Mexico is the tomato
(Solanum lycopersicum), which occupies the 4th place national most produced
product . Therefore, it is necessary to improve its production, building
automatic detection system that detect, classify an keep tacks of the fruits is
one way to archieve it. So, in this paper, we address the design of a computer
vision system to detect tomatoes at different ripening stages. To solve the
problem, we use a neural network-based model for tomato classification and
detection. Specifically, we use the YOLOv3-tiny model because it is one of the
lightest current deep neural networks. To train it, we perform two grid
searches testing several combinations of hyperparameters. Our experiments
showed an f1-score of 90.0% in the localization and classification of ripening
stages in a custom dataset.
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