Use of Convolutional Neural Networks (CNN) to recognize the quality of oranges in Peru by 2023

Author:

Moza Villalobos FranklinORCID,Natividad Villanueva JuanORCID,Meneses Claudio BrianORCID

Abstract

Introduction: the agricultural sector in Peru has witnessed a notable increase in the production of oranges, which has promoted the essential use of convolutional neural networks (CNN). The ability to interpret images by visual artificial intelligence has been fundamental for the analysis and processing of these images, especially in the detection and classification of fruits, standing out in the specific case of oranges.Objective: conduct a systematic literature review (RSL) to evaluate the neural networks used in the classification of oranges in Peru.Method: an RSL was carried out using the PICO strategy to search the Scopus database. The selection criteria included studies that used convolutional neural networks to classify the quality status of oranges in the Peruvian context.Results: all the studies reviewed were based on the use of convolutional neural networks (CNN) for fruit classification, using various architectures and techniques. Some studies focused on a single specific fruit, while others addressed the classification of multiple types of fruits, highlighting the importance of the number and variety of images for training the networks.Conclusions: convolutional neural networks show effectiveness in orange classification, but the quality of the images and the variety of data are essential to improve accuracy

Publisher

Salud, Ciencia y Tecnologia

Reference19 articles.

1. 1. Muñoz Villalobos IA, Bolt A. Diseño y desarrollo de aplicación móvil para la clasificación de flora nativa chilena utilizando redes neuronales convolucionales. RIAI - Revista Iberoamericana de Automatica e Informatica Industrial [Internet]. 2017 Jan 1; 14(1):104–14. Available from: https://revistas.ufpr.br/atoz/article/view/81419

2. 2. Leelavathy B, Sri Datta YSS, Rachana YS. Quality Assessment of Orange Fruit Images Using Convolutional Neural Networks. Springer eBooks [Internet]. 2020; 56:403–12. Available from: https://www.scinapse.io/papers/3115286542

3. 3. Coa YMF, Crisostomo NWF, Díaz-Barriga GE. Desarrollo económico sostenible bajo un régimen social sin preceptos éticos y morales: auditoría forense en contraposición de la corrupción. Revista Científica Empresarial Debe-Haber 2023;1:48-62

4. 4. Trieu NM, Thinh NT. A Study of Combining KNN and ANN for Classifying Dragon Fruits Automatically. Journal of Image and Graphics(United Kingdom) [Internet]. 2022 Mar 1; 10(1):28–35. Available from: https://www.researchgate.net/publication/358940623_A_Study_of_Combining_KNN_and_ANN_for_Classifying_Dragon_Fruits_Automatically

5. 5. Gonzalez-Argote J. Analyzing the Trends and Impact of Health Policy Research: A Bibliometric Study. Health Leadership and Quality of Life 2023;2:28-28. https://doi.org/10.56294/hl202328

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