Papaya Fruit Type Classification using LBP Features Extraction and Naive Bayes Classifier

C. A. Sari, Indah Puspa Sari, E. H. Rachmawanto, De Rosal Ignatius Moses Setiadi, Ellen Proborini, Bijanto, R. R. Ali, Ifan Rizqa
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引用次数: 4

Abstract

This research proposes the classification method of papaya types based on leaf images using the Naïve Bayes classifier and LBP feature extraction. Papaya leaves are used because they have a unique pattern and texture from their leaf bones, besides leaf-based classification can be done before papaya trees produce fruit. In the preprocessing process, three stages are carried out in which conversion to grayscale, image adjustment and resize, to produce a good LBP feature extraction. The resize process is useful to reduce computational time during the training and testing process, where this process is done at the end of the preprocessing process to get a better pixel value. Image adjustment is used to sharpen the papaya leaf bone which is the main pattern of the papaya leaf. At the feature extraction stage, an image zoning process is carried out, by dividing the image into nine zones, to produce nine LBP features for each image. In the implementation phase, a total of 150 papaya leaf images were used which consisted of 125 training images and 25 testing images. Based on the results of the classification using the Naïve Bayes classifier by using nine zones each with 128-pixel cell size and image adjustment resulting 96% accuracy. The results of this accuracy are better than using cell sizes 32 and 64 and without image adjustment.
基于LBP特征提取和朴素贝叶斯分类器的木瓜果实类型分类
本研究提出了基于Naïve贝叶斯分类器和LBP特征提取的木瓜叶片图像类型分类方法。使用番木瓜叶子是因为它们的叶骨具有独特的图案和纹理,此外,基于叶子的分类可以在番木瓜树结果之前完成。在预处理过程中,进行了灰度转换、图像调整和大小调整三个阶段,以产生良好的LBP特征提取。调整大小过程有助于减少训练和测试过程中的计算时间,其中该过程在预处理过程结束时完成,以获得更好的像素值。图像调整是用来锐化木瓜叶骨,这是木瓜叶的主要图案。在特征提取阶段,对图像进行分区处理,将图像划分为9个区域,为每张图像生成9个LBP特征。在实施阶段,总共使用了150张木瓜叶片图像,其中包括125张训练图像和25张测试图像。根据分类结果,使用Naïve贝叶斯分类器使用9个区域,每个区域128像素的单元大小和图像调整,得到96%的准确率。这种精度的结果优于使用单元格大小为32和64且不进行图像调整的结果。
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