Discrete Curvelet Transform Feature Extraction for Mangosteen Fruit Surface Damage Detection

N. A. Utama, Wahyu Indah Triyani, Slamet Riyadi, Cahya Damarjati
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Abstract

Mangosteen (Garcinia mangostana L) is one of the commodities of Indonesian fruit and is used as an export primadona that became the basis of Indonesia to increase the currency of the country. The quality of the fruit can be seen from the surface, whether there is damage or not. The sorting that the farmers have been doing all this time is still using the conventional way, that is, with the sense of sight. This conventional method seems to be less effective because it takes a lot of energy, takes a long time, and there are different perceptions between farmers. To solve this problem, a method of surface quality extraction of mango fruit will be developed based on image processing. The initial stage of image processing is with the image size equation then the image is converted to grayscale mode, then a discrete curvelet transformation is performed. The next stage is the extraction of mean, energy, entropy, standard deviation, variance, sum, correlation, contrast, and homogeneity. The result of the subsequent feature extraction is used to enter a value at the classification stage. From some of these extractions it will be known which extraction has the highest accuracy value. The method of classification used is Linear Discriminant Analysis (LDA) with the method of K-Fold Cross Validation which in this study is divided into 4-fold cross validation. After testing on 120 images, the highest value of accuracy is with extraction of standard characteristics deviation of 91.7% and variance of 88.4%.
用于山竹果表面损伤检测的离散小曲线变换特征提取
山竹果(Garcinia mangostana L)是印尼的水果商品之一,被用作出口的主要水果,成为印尼增加国家货币的基础。水果的质量可以从表面看出是否有损伤。果农们一直以来使用的分拣方法仍然是传统方法,即用视觉进行分拣。这种传统方法似乎不太有效,因为它耗费大量精力,耗时较长,而且果农之间的认识也不尽相同。为了解决这个问题,我们将开发一种基于图像处理的芒果果实表面质量提取方法。图像处理的初始阶段是图像大小方程,然后将图像转换为灰度模式,再进行离散小曲线变换。下一阶段是提取平均值、能量、熵、标准偏差、方差、总和、相关性、对比度和同质性。随后的特征提取结果将用于在分类阶段输入一个值。从其中一些提取结果中,可以知道哪种提取的准确度值最高。使用的分类方法是线性判别分析(LDA)和 K 倍交叉验证法,在本研究中分为 4 倍交叉验证。在对 120 幅图像进行测试后,准确率最高的是标准特征偏差提取,准确率为 91.7%,方差提取,准确率为 88.4%。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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