Objective: Apply the GLCM method to select mango leaf feature extraction and determine the accuracy level obtained from the K-Nearest Neighbor classification results.Design/method/approach: Using GLCM and K-Nearest Neighbor(KNN) methods. System development using the Prototype method.Results: The test results have been carried out using as many as 60 mango leaves compared to training data and 80:20 test data, with different accuracy. The highest accuracy is at K = 3 by 81% using 6 features, K = 6 by 78% using 5 features, and K = 7 by 74% using 4 features.Authenticity/state of the art: The difference between this research and previous research is the pre-processing method, the type of features used, and the classification method. In this method, the mango leaf image is converted to grayscale, and a feature extraction process is carried out. Then the results of feature extraction will be classified using the K-Nearest Neighbor method. The output of this system is the result of the image classification of mango leaves, such as Kweni, Lalijowo, and Madu.
CITATION STYLE
Hutasoit, B. J., Sofyan, H., & Kodong, F. R. (2021). Classification of mango plants based on leaf shape using GLCM and K-nearest neighbor methods. Computing and Information Processing Letters, 1(1), 1. https://doi.org/10.31315/cip.v1i1.6124
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