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利用小波变换和遗传算法对水果图像纹理进行外观和特征描述,以实现品质分选。

Appearance and characterization of fruit image textures for quality sorting using wavelet transform and genetic algorithms.

机构信息

Department of Electronics and Telecommunication Engineering, MAEER's MIT College of Engineering, Pune, Maharashtra, India.

出版信息

J Texture Stud. 2018 Feb;49(1):65-83. doi: 10.1111/jtxs.12284. Epub 2017 Aug 6.

Abstract

UNLABELLED

Images of four qualities of mangoes and guavas are evaluated for color and textural features to characterize and classify them, and to model the fruit appearance grading. The paper discusses three approaches to identify most discriminating texture features of both the fruits. In the first approach, fruit's color and texture features are selected using Mahalanobis distance. A total of 20 color features and 40 textural features are extracted for analysis. Using Mahalanobis distance and feature intercorrelation analyses, one best color feature (mean of a* [Lab* color space]) and two textural features (energy a*, contrast of H*) are selected as features for Guava while two best color features (R std, H std) and one textural features (energy b*) are selected as features for mangoes with the highest discriminate power. The second approach studies some common wavelet families for searching the best classification model for fruit quality grading. The wavelet features extracted from five basic mother wavelets (db, bior, rbior, Coif, Sym) are explored to characterize fruits texture appearance. In third approach, genetic algorithm is used to select only those color and wavelet texture features that are relevant to the separation of the class, from a large universe of features. The study shows that image color and texture features which were identified using a genetic algorithm can distinguish between various qualities classes of fruits. The experimental results showed that support vector machine classifier is elected for Guava grading with an accuracy of 97.61% and artificial neural network is elected from Mango grading with an accuracy of 95.65%.

PRACTICAL APPLICATIONS

The proposed method is nondestructive fruit quality assessment method. The experimental results has proven that Genetic algorithm along with wavelet textures feature has potential to discriminate fruit quality. Finally, it can be concluded that discussed method is an accurate, reliable, and objective tool to determine fruit quality namely Mango and Guava, and might be applicable to in-line sorting systems.

摘要

未加标签

为了对芒果和番石榴的颜色和纹理特征进行特征描述和分类,并对水果外观分级进行建模,评估了这四种品质的芒果和番石榴的图像。本文讨论了三种方法来识别这两种水果最具区分性的纹理特征。在第一种方法中,使用马氏距离选择水果的颜色和纹理特征。共提取了 20 种颜色特征和 40 种纹理特征进行分析。通过马氏距离和特征相关性分析,选择了一个最佳颜色特征(Lab颜色空间的平均 a)和两个最佳纹理特征(a的能量和对比度)作为番石榴的特征,而选择了两个最佳颜色特征(R std,H std)和一个纹理特征(b的能量)作为芒果的特征,这些特征具有最高的判别能力。第二种方法研究了一些常用的小波族,以寻找最佳的水果质量分级分类模型。从五个基本母小波(db、bior、rbior、Coif、Sym)中提取的小波特征被用来描述水果的纹理外观。在第三种方法中,遗传算法用于从大量特征中选择与类别的分离相关的颜色和小波纹理特征。研究表明,使用遗传算法识别的图像颜色和纹理特征可以区分不同品质的水果。实验结果表明,支持向量机分类器被选为番石榴分级的分类器,准确率为 97.61%,人工神经网络被选为芒果分级的分类器,准确率为 95.65%。

实际应用

所提出的方法是一种无损的水果质量评估方法。实验结果证明,遗传算法结合小波纹理特征具有区分水果质量的潜力。最后,可以得出结论,所讨论的方法是一种准确、可靠和客观的工具,可以确定水果的质量,即芒果和番石榴,并且可能适用于在线分拣系统。

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