机器学习在柑桔产量预测中的应用

Ahsan Rehman Gill, Muhammad Azam, Muhammad Nouman
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引用次数: 0

摘要

柑橘是人工计数来估计产量的。通过使用一些创新的农业技术可以提高产量和产量。近年来引入了许多农业创新。由于人口的预期增长,更高的农业产量、预测和可靠的作物状况信息比以往任何时候都更加重要。农业一直是人类社会的基础。目前的研究旨在2020年开发一个基于图像处理的可靠且有意义的信息收集农业领域。柑橘产量可以在最初阶段通过使用机器学习技术从不同角度从安卓手机上拍摄的基于RGB和HSV的图像进行计数来提高。钾肥、磷和氮等肥料可以用来提高产量。根据研究结果,农民可以通过将机器学习与农业相结合,更有效地控制和监测柑橘的健康生产。使用给定技术计算的柑橘与手动计数的柑橘相比,在一块田地的每个地块上,每株植物的柑橘含量差异高达5到10个。所提出的方法在不同的光照条件、叶片遮挡和果实重叠的情况下,在距离橘子树不同距离拍摄的照片上产生了良好的结果。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
APPLICATION OF MACHINE LEARNING IN ESTIMATING ONTREE YIELD OF CITRUS FRUIT
Citrus is manually counted to estimate the yield. By using some innovative agricultural techniques yield and production can be increased. Numerous agricultural innovations have been introduced in recent years. Higher agricultural production, prediction, and reliable crop status information are more important than ever due to the expected growth of the human population. Agriculture has always been the foundation of human society. Current study was aimed to develop a reliable and meaningful information-gathering agricultural field based on image processing during 2020. Citrus yield can be increased in the initial stages by counting it with RGB and HSV-based images taken from an Android phone from various angles using machine learning techniques. Fertilizers such as potash, phosphorus, and nitrogen can then be utilized to boost yield. According to the findings, farmers can control and monitor citrus health production more efficiently and effectively by integrating machine learning with agriculture. The citrus calculation using the given technique compared with manually counted citrus, having difference of up to 5 to 10 citruses for a single plant per plot in a field. The proposed method produced excellent results under varying lighting conditions, leaf occlusion, and fruit overlap on photos taken at various distances from the orange trees.
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