Smart Harvesting Decision System for Date Fruit Based on Fruit Detection and Maturity Analysis Using YOLO and K-Means Segmentation

Mohamed Ouhda, Zarouit Yousra, Brahim Aksasse
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引用次数: 1

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.
基于YOLO和K-Means分割的枣果实检测与成熟度分析的智能采收决策系统
枣椰树(Phoenixdactylifera)是一种大型棕榈树,其奇异的果实高达30米。枣椰树生产的果实营养丰富,提供了大量的二次产品,并为大量人口的生存创造了必要的收入。人工采伐造成的损失包括数量和质量两个方面,后者通过外观、味道、质地、营养或经济价值等属性来衡量。这些损失在数量和质量上都受到收获过程所有阶段的做法的影响。另一方面,由于椰枣树的长度,工作事故的风险很高。为了减少损失和降低风险,有必要提出一个机器人收获的决策系统,以帮助农民克服收获过程中的限制。各种农产品的质量和成熟度评估严重依赖于颜色这一关键属性。本研究提出了一种基于深度学习、k均值聚类和颜色分析的智能收获决策系统来估计成熟度水平。决策系统的性能是通过使用果园中的日期水果数据集和各种指标来评估的。实验结果表明,该方法是有效的,系统具有较高的精度。该系统可以检测、定位和分析成熟期,从而做出收获决策。
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来源期刊
Journal of Computer Science
Journal of Computer Science Computer Science-Computer Networks and Communications
CiteScore
1.70
自引率
0.00%
发文量
92
期刊介绍: Journal of Computer Science is aimed to publish research articles on theoretical foundations of information and computation, and of practical techniques for their implementation and application in computer systems. JCS updated twelve times a year and is a peer reviewed journal covers the latest and most compelling research of the time.
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