使用支持向量机根据颜色特征对牛油果成熟度进行分类

Amir Hamzah, Erma Susanti, Ria Mega Lestari
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引用次数: 0

摘要

牛油果的成熟度在很大程度上影响着水果的保质期,也决定着水果的口感。确定水果的适当成熟度对提高营养价值有重要作用,而牛油果的成熟度会影响牛油果油的质量。人工对水果成熟度进行分类有很多局限性,因为它会受到人为主观因素的影响,因此需要应用数字图像处理技术。本研究旨在对牛油果水果成熟度进行分类,分为三个类别,即未成熟、成熟和腐烂。这项研究的目的是通过水果的颜色来促进水果成熟度的分类。本研究以鳄梨果实为实验材料,采用 SVM(支持向量机)方法进行。 各种牛油果在不同位置和光照对比条件下的颜色被用作牛油果类型分类的数据。数据收集选自 Keagle 数据集的 150 个数据。 数据被分为两个数据集,即数据集-1(120 个训练数据和 30 个测试数据)和数据集-2(90 个训练数据和 60 个测试数据)。为了便于分类,图像将被转换成灰度,并寻找 HSV(色调、饱和度、值)和 RGB(红、绿、蓝)值来对水果进行分类。 数据集-1 的准确率为 86%,精确率为 90%,召回率为 86%;数据集-2 的准确率为 85%,精确率为 84%,召回率为 85%。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
KLASIFIKASI KEMATANGAN BUAH ALPUKAT MENTEGA BERDASARKAN FITUR WARNA MENGGUNAKAN SUPPORT VECTOR MACHINE
The ripeness level of the avocado greatly affects the shelf life of the fruit and also determines the taste of the fruit. Determining the proper ripeness of a fruit will play an important role in increasing the nutritional value and ripeness of avocado affects the quality of avocado oil. Classification of fruit maturity manually has many limitations because it is influenced by human subjectivity so that the application of digital image processing needs to be used.This study aims to classify avocado fruit ripeness which is divided into three categories, namely Unripe, Ripe, and Rotten. This research is intended to facilitate the classification of ripeness in fruit through its color. This study used avocado fruit as an experimental material which was carried out using the SVM (Support Vector Machine) method.  The colors of the various avocados and in different positions and conditions of light contrast are used as data to classify the types of avocados. Data collection was taken from the selected Keagle Dataset of 150 data.  The data is grouped into two data sets, namely dataset-1 (120 training data and 30 test data) and dataset-2 (90 training data and 60 test data). The image will be converted to grayscale to facilitate the classification process and look for HSV (Hue, Saturation, Value) and RGB (Red, Green, Blue) values to classify the fruit.  The results from dataset-1 has an accuracy rate of 86%, 90% precision, and 86% Recall, while dataset-2 has an accuracy rate of 85%, 84% precision, and 85% Recall.
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