Classification of Trifolium Seeds by Computer Vision Methods

Q3 Mathematics
Recep Eryigit, Yilmaz Ar, Bulent Tugrul
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引用次数: 2

Abstract

Traditional machine learning methods have been extensively used in computer vision applications. However, recent improvements in computer technology have changed this trend. The dominance of deep learning methods in the field is observed when state-of-the-art studies are examined. This study employs traditional computer vision methods and deep learning to classify five different types of Trifolium seeds. Trifolium, the leading food for nutritious dairy products, plays an essential role in livestock in some parts of the world. First, an image data set consisting of 1903 images belonging to five different species of Trifolium was created. Descriptive and quantitative morphological features of each species are extracted using image-processing techniques. Then a feature matrix was created using eight different features. After feature selection and transformation, unnecessary and irrelevant features were removed from the data set to build more accurate and robust classification models. Four common and frequently applied classification algorithms created a prediction model in the seed data set. In addition, the same dataset was trained using VGG19, a convolutional neural network. Finally, the performance metrics of each classifier were computed and evaluated. The decision tree has the worst accuracy among the four traditional methods, 92.07%. On the other hand, Artificial Neural Network has the highest accuracy with 94.59%. As expected, VGG19 outperforms all traditional methods with 96.29% accuracy. However, as the results show, traditional methods can also produce results close to the deep learning methods.
三叶草种子的计算机视觉分类
传统的机器学习方法在计算机视觉应用中得到了广泛的应用。然而,最近计算机技术的进步改变了这一趋势。当检查最先进的研究时,可以观察到深度学习方法在该领域的主导地位。本研究采用传统的计算机视觉方法和深度学习对五种不同类型的三叶草种子进行分类。三叶草是营养乳制品的主要食品,在世界某些地区的牲畜中起着至关重要的作用。首先,创建了一个由属于五个不同种类的三叶草的1903幅图像组成的图像数据集。使用图像处理技术提取每个物种的描述性和定量形态学特征。然后用8个不同的特征创建一个特征矩阵。经过特征选择和转换,从数据集中去除不必要和不相关的特征,以建立更准确和鲁棒的分类模型。四种常用的分类算法在种子数据集中创建了一个预测模型。此外,使用卷积神经网络VGG19训练相同的数据集。最后,对每个分类器的性能指标进行了计算和评价。在四种传统方法中,决策树的准确率最差,为92.07%。另一方面,人工神经网络的准确率最高,为94.59%。正如预期的那样,VGG19的准确率达到96.29%,优于所有传统方法。然而,正如结果所示,传统方法也可以产生接近深度学习方法的结果。
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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来源期刊
WSEAS Transactions on Systems and Control
WSEAS Transactions on Systems and Control Mathematics-Control and Optimization
CiteScore
1.80
自引率
0.00%
发文量
49
期刊介绍: WSEAS Transactions on Systems and Control publishes original research papers relating to systems theory and automatic control. We aim to bring important work to a wide international audience and therefore only publish papers of exceptional scientific value that advance our understanding of these particular areas. The research presented must transcend the limits of case studies, while both experimental and theoretical studies are accepted. It is a multi-disciplinary journal and therefore its content mirrors the diverse interests and approaches of scholars involved with systems theory, dynamical systems, linear and non-linear control, intelligent control, robotics and related areas. We also welcome scholarly contributions from officials with government agencies, international agencies, and non-governmental organizations.
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