RANCANG BANGUN SISTEM DETEKSI KEMATANGAN BUAH KELAPA SAWIT BERDASARKAN DETEKSI WARNA MENGGUNAKAN ALGORITMA K-NN

A. Saputra, Enny Dwi Oktaviyani
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Abstract

The rapid growth of the palm oil industry has made it increasingly important to develop applications that can detect the maturity level of oil palm fruit. This paper presents the design and development of an application for detecting the maturity level of oil palm fruit based on color composition using the K-NN algorithm. The K-NN algorithm is used to classify the oil palm fruit based on the color composition that is related to its maturity level.   The application uses image processing technology to measure the qualitative and quantitative parameters of various maturity indicators, such as color, size, and texture. Different color compositions of the oil palm fruit indicate different maturity levels, and using the K-NN algorithm, the fruit can be classified based on its maturity level. The application helps reduce production costs and losses caused by errors in harvesting the fruit.   The application is designed to be user-friendly and accessible to farmers and plantation managers. The user interface is simple and intuitive, allowing users to easily input the image of the oil palm fruit and get a quick analysis of its maturity level. The results are displayed in a clear and understandable way, making it easy for users to make informed decisions about when to harvest the fruit.   In conclusion, the application for detecting the maturity level of oil palm fruit based on color composition using the K-NN algorithm is a useful tool in the palm oil industry. It helps farmers and plantation managers determine the optimal time for harvesting the fruit, reducing production costs and increasing productivity. The user-friendly interface makes it accessible to a wider range of users and facilitates informed decision-makin
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随着棕榈油工业的快速发展,开发能够检测油棕果实成熟度的应用变得越来越重要。本文设计并开发了一种基于K-NN算法的油棕果实颜色成分成熟度检测应用。采用K-NN算法,根据与油棕果实成熟度相关的颜色组成对油棕果实进行分类。该应用程序使用图像处理技术来测量各种成熟度指标的定性和定量参数,如颜色、大小和纹理。油棕果实不同的颜色组成表示不同的成熟度,利用K-NN算法可以根据成熟度对果实进行分类。该应用程序有助于降低生产成本和因收获水果错误造成的损失。该应用程序的设计是用户友好的,可供农民和种植园管理人员使用。用户界面简单直观,用户可以轻松输入油棕果实的图像,并快速分析其成熟度。结果以一种清晰易懂的方式显示,使用户很容易就何时收获水果做出明智的决定。综上所述,基于颜色组成的K-NN算法在油棕果实成熟度检测中的应用是棕榈油行业中一个有用的工具。它可以帮助农民和种植园管理者确定收获水果的最佳时间,从而降低生产成本并提高生产力。用户友好的界面使更广泛的用户可以访问它,并促进明智的决策
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