Smart Harvesting Decision System for Date Fruit Based on Fruit Detection and Maturity Analysis Using YOLO and K-Means Segmentation
- 1 Department of Computer and Mathematics, TIAD Laboratory, Higher School of Technology, Sultan Moulay Slimane University, Khenifra, Morocco
- 2 Department of Computer Science, Faculty of Sciences and Technics, Moulay Ismail University, Errachidia, Morocco
- 3 Department of Computer Science, Faculty of Sciences, MAIS Laboratory, Moulay Ismail University Meknes, Morocco
Abstract
The date palm (Phoenixdactylifera) is a large palm with exotic fruits measuring up to 30 metersin height. The date palm produces fruits rich in nutrients provides a multitudeof secondary products, and generates income necessary for the survival of alarge population. Losses attributed to manual harvesting encompass bothquantitative and qualitative aspects, with the latter measured throughattributes such as appearance, taste, texture, and nutritional or economicvalue. These losses, in terms of both quantity and quality, are influenced bypractices across all phases of the harvesting process. On the other hand, therisks of work accidents are high because of the length of the date palms. Toreduce the losses and reduce risks, it is essential to propose a decisionsystem for robotic harvesting to help farmers overcome the constraints duringthe harvest. The assessment of quality and maturity levels in variousagricultural products is heavily reliant on the crucial attribute of color. Inthis study, an intelligent harvesting decision system is proposed to estimatethe level of maturity based on deep learning, K-means clustering, and coloranalysis. The decision system's performance is assessed using the dataset ofdate fruit in the orchard and various metrics. Based on the experimentalresults, the proposed approach has been deemed effective and the systemdemonstrates a high level of accuracy. The system can detect, locate, andanalyze the maturity stage to make a harvest decision.
DOI: https://doi.org/10.3844/jcssp.2023.1242.1252
Copyright: © 2023 Mohamed Ouhda, Zarouit Yousra and Brahim Aksasse. This is an open access article distributed under the terms of the Creative Commons Attribution License, which permits unrestricted use, distribution, and reproduction in any medium, provided the original author and source are credited.
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Keywords
- Deep Learning
- Date Harvest
- Yolo
- Maturity Analysis
- K-Means Segmentation