基于水果特征的KNN分类方法

Mohammed Azman, Nur Nafi’iyah
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引用次数: 0

摘要

与水果类型识别相关的研究此前已经完成。与识别多种水果相关的研究应用了计算机视觉和人工智能。本研究的目的是应用人工智能科学和KNN方法来识别水果的类型。在以往的研究中,KNN方法具有良好的性能。我们试图通过确定最优K值来使用KNN。在这项研究中有五种类型的水果图像,即苹果,葡萄,橙子,芒果和草莓。提取水果图像的颜色、纹理、形状特征,共15个特征,分别为R均值、G均值、B均值、偏度R值、偏度G值、偏度B值、灰度熵值。、灰度对比度值、灰度能量值、灰度关联值、灰度均匀性值、二值面积值、二值周长值、二值长轴值、二值短轴值。本研究使用的数据集来自Kaggle,数据集为2750张图像,每种水果包含550张图像,其中2500张用于训练图像,250张用于测试。实验结果表明,K=1的KNN方法准确率最高,达到99.6%。KNN方法可以最优地用于基于颜色、纹理和形状特征的水果类型分类。
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KNN FOR CLASSIFICATION OF FRUIT TYPES BASED ON FRUIT FEATURES
Research related to the recognition of fruit types has been done previously. Research related to the recognition of many types of fruit applies computer vision and artificial intelligence. The purpose of this research is to apply artificial intelligence science with the KNN method to identify the type of fruit. The KNN method has a good performance in previous studies. We tried to use KNN by determining the most optimal K value. There are five types of fruit images used in this study, namely Apples, Grapes, Oranges, Mangoes, and Strawberries. The fruit image is extracted with colour, texture, and shape features with a total of 15 features, namely the average value of R, the average value of G, the average value of B, the value of skewness R, the value of skewness G, the value of skewness B, the value of grayscale entropy. , grayscale contrast value, grayscale energy value, grayscale correlation value, grayscale homogeneity value, binary area value, binary circumference value, binary major axis value, and binary minor axis value. The dataset used in this study was taken from Kaggle, with a dataset of 2750 images, each type of fruit contained 550 images, 2500 training images were used and 250 images were used for testing. The experimental results show that the KNN method with K=1 has the highest accuracy, which is 99.6%. The KNN method can be used optimally in classifying fruit types based on colour, texture, and shape features.
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