PERBANDINGAN METODE RAPSV DAN GLCM UNTUK EKSTRAKSI FITUR PADA KLASIFIKASI JENIS KAYU

Pratama, Angga Mahditya Indra (2023) PERBANDINGAN METODE RAPSV DAN GLCM UNTUK EKSTRAKSI FITUR PADA KLASIFIKASI JENIS KAYU. undergraduate thesis, Universitas Muhammadiyah Gresik.

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Abstract

Wood is an important natural resource and is used as a raw material in the production of various household products such as sideboards, cupboards, chairs, tables, and so on. Identification of wood species after being logged is difficult because it requires recognition of small features such as pore arrangement, pore shape, pore frequency, and wood radius, which can only be seen clearly using a tool such as a microscope with a minimum magnification of 10x. The classification of wood image types serves to determine which includes agathis wood images, keruing wood images and meranti wood images. The extraction methods to be compared are the RAPSV (Radial Average Power Spectrum) Algorithm and the GLCM Algorithm, using the KNN, Naïve Bayes, and Random Forest classification methods. which is higher than the GLCM feature extraction method, namely 93.14% using KNN with K=1, 70% using Naïve Bayes and 92.57% using Random Forest.

Item Type: Thesis (undergraduate)
Uncontrolled Keywords: GLCM, RAPSV, Wood
Subjects: Engineering > Informatics Engineering
Engineering
Divisions: Faculty of Engineering > Informatics Engineering Study Program
Depositing User: Angga Mahditya Indra Pratama
Date Deposited: 26 Jan 2024 07:57
Last Modified: 26 Jan 2024 07:57
URI: http://eprints.umg.ac.id/id/eprint/9248

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