用离散曲线变换评价山竹表面质量

S. Riyadi, Jaenudin, Laila Marrifatul Azizah, Cahya Damarjati, T. Hariadi
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引用次数: 2

摘要

山竹是印尼出口水果的主要商品。只有无缺陷的山竹才出口,这些山竹通常是由人类视觉分类的。为了实现山竹表面缺陷和无缺陷的自动分类,并处理大量的出口,机器视觉有很大的机会。本文的目的是利用离散曲线变换(DCT)对山竹表面图像进行分类。曲波变换是一种多尺度的方向变换,它允许对有边缘的物体进行最优的非自适应稀疏表示。本研究的方法包括预处理、DCT的实现、统计特征提取和使用线性判别分析的分类。该方法已在80幅山竹果图像上实现,并使用4重交叉验证法进行了验证。在DCT的二级尺度上,缺陷与非缺陷表面的分类准确率最高,达到92.5%。综上所述,该方法能够对山竹果的表面质量进行评价。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Evaluation of Mangosteen Surface Quality using Discrete Curvelet Transform
Mangosteen is the major commodity of fruit export from Indonesia. Only free-defect mangosteens are exported which were conventionally classified by human vision. In order to automate the classification between defect and free-defect mangosteen surface and handle high volume of export, machine vision has a great opportunity. The objective of this paper is to classify mangosteen surface images using discrete curvelet transform (DCT). The curvelet transform is a multiscale directional transform, which allows an optimal non-adaptive sparse representation of objects with edges. The methodology of this research involved pre-processing, implementation of DCT, statistical features extraction and classification using linear discriminant analysis. The method has been implemented on a number of 80 mangosteen images and validated using 4-fold cross validation method. The highest accuracy of classification between defect and non-defect surface is 92.5% obtained on second scale of DCT. In conclusion, the proposed method is able to evaluate mangosteen quality surfaces.
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