基于蓝莓成熟度的 K - 平均值分割算法

Aditya Putra Prananda, A. M. H. Pardede, Rahmadani
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摘要

传统上,果农和消费者通过人工方法来判断蓝莓的成熟度,如观察蓝莓果实的颜色、毛孔和果皮。这种识别方法需要花费相对较长的时间,而且由于人们的视觉识别能力、疲劳程度以及对成熟度的不同看法,会产生不同的成熟度。消费者往往会关注蓝莓醒目的颜色和大小等方面,但却不知道水果的成熟度和营养成分是否适合食用。本研究采用了多种图像处理技术,包括基于颜色特征进行分割的图像分割、去除噪声的膨胀和收缩操作,以及使用递归分量标记方法命名水果对象。随后是几何特征和颜色的分离和训练。在测试时,对对象的成熟度和水果类型进行分类。为了更准确地识别水果的成熟度,需要检查几何特征和颜色含量的特征值。通过平均值和标准偏差等统计方法确定范围值。该研究使用 K-Means 算法对蓝莓图像进行分割,旨在开发一种自动区分蓝莓成熟度等级的有效方法。它有助于根据蓝莓的成熟度对其进行分类和分组。此外,本研究的结果还可用于农业行业的蓝莓质量控制或水果营销应用。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Segmentation Algorithm K – Means Based On The Maturity Level Of Blueberries
Traditionally, farmers and consumers have determined the ripeness of blueberries by manual means, such as observing the color, pores, and skin of blueberry fruits. Such recognition takes a relatively long time and gives rise to different levels of maturity because people have visual limitations in recognition, fatigue levels and differences of opinion about good maturity. Consumers tend to pay attention to aspects such as the striking color and size of blueberries, but do not know how ripe and nutritious the fruit is for consumption. Several image processing techniques were used in this study, including image segmentation for segmentation based on color features, expansion and contraction operations to remove noise, and naming fruit objects using recursive component labeling methods. This is followed by separation and training of geometric features and colors. At the time of testing, a classification of the degree of maturity and type of fruit of the object is carried out. To more accurately identify the degree of ripeness of the fruit, check the geometric features and characteristic values of the color content. Range values are determined by statistical methods such as mean and standard deviation. Using the K-Means algorithm to segment blueberry imagery, the study aimed to develop an efficient method to distinguish blueberry ripeness levels automatically. It can help classify and group blueberries according to their degree of maturity. In addition, the results of this study can also be used for quality control of blueberries in the agricultural industry or for fruit marketing applications.
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