基于机器学习方法的油棕鲜果束成熟度分级

Anindita Septiarini, H. R. Hatta, H. Hamdani, Ana Oktavia, A. A. Kasim, S. Suyanto
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引用次数: 9

摘要

油棕新鲜果束(FFB)成熟度分级是农业部门的一个重要问题,因为棕榈油的质量取决于成熟度水平。近年来,高品质棕榈油的产量不断增加。因此,需要在农业中实施计算机视觉对油棕FFB成熟度进行分级,避免在确定成熟度等级时的主观性。本研究提出了一种对FFB成熟度进行分级的方法。通常,这种分类方法使用颜色特征来执行。在本研究中,使用颜色特征来区分油棕FFB的成熟度。在L*a*b颜色空间中提取的平均值作为颜色特征,然后在分类过程中实现机器学习方法:线性判别分析(LDA)。该实验使用了150张图像的数据集,分为三种不同的类别:未成熟、未成熟和成熟。数据集的应用分为两个阶段:分别对60张图像和90张图像进行训练和测试。使用90张图像的测试数据集对所使用的方法进行性能评估,成功地达到了98.89%的准确率值。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Maturity Grading of Oil Palm Fresh Fruit Bunches Based on a Machine Learning Approach
Grading maturity oil palm fresh fruit bunches (FFB) is an essential issue in the agriculture sector because the quality of palm oil determines based on the maturity level. Recently, the production of high-quality palm oil has increased continually. Therefore, the implementation of computer vision in agriculture for grading the maturity of oil palm FFB is required to avoid subjectivity in determining the maturity level. This study develops a classification method for grading the maturity level of FFB. Generally, this classification method performed using the color feature. In this study, the color feature is used to distinguish the maturity level of oil palm FFB. The mean value extracted as the color features in L*a*b color space is followed by implementing a machine learning method: Linear Discriminant Analysis (LDA), in the classification process. The experiment used a dataset of 150 images with three different classes: raw, under-ripe, and ripe. The dataset is applied in two stages: training and testing of 60 images and 90 images, respectively. The performance evaluation of the method used successfully achieved an accuracy value of 98.89% using a testing dataset of 90 images.
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