Santi, Nirma Ceisa and Audytra, Hastie (2022) Teakwood Grade Identification with GLCM and K-NN with Adaboost Optimization (Case Study at KPH Cepu). Ultimatics : Jurnal Teknik Informatika, 14 (1). pp. 45-50. ISSN 2085-4552
Jurnal Bu Nirma (1).pdf
Download (382kB)
Bu Nirma.pdf
Download (1MB)
Abstract
Abstract— Teak is one type of tree that has many functions and uses. Teak wood have a very high quality to choose as resource for the manufacture of home furniture such as tables, chairs, cabinets, and others. But middle testers (Perhutani staff) who test the quality of wood grade have limitations if the classification uses the five senses of sight and there are still many furniture entrepreneurs who are often mistaken about teak wood quality assessment. This resulted in a lack of quality grade teak wood used as raw material for making home appliances or for furniture and commerce in Perhutani Corporation, especially KPH Cepu. The teak wood image data is then acquired through preprocessing data ready to be processed. By using GLCM as an image feature extraction both training data and testing data. after the image characteristics are obtained, the image is classified by the K-Nearest Neighbor method with adaboost
optimization. The final result is obtained in the form of
wood grade quality classification namely grade A, B, C and D according to the class.
Item Type: | Article |
---|---|
Uncontrolled Keywords: | Classification, GLCM, KNN, Teakwood |
Subjects: | 000 - Komputer, Informasi dan Referensi Umum > 000 Ilmu komputer, ilmu pengetahuan dan sistem-sistem > 005 Pemrograman komputer, program dan data |
Divisions: | Fakultas Sains dan Teknologi > Sistem Informasi |
Depositing User: | Fransisca Ira Suryaningsis |
Date Deposited: | 04 Jan 2024 01:48 |
Last Modified: | 04 Jan 2024 01:48 |
Contributors (Pembimbing / Pengarah): | Contribution Name NIDN Author Santi, Nirma Ceisa NIDN0730099402 Author Audytra, Hastie NIDN0708049004 |
URI: | https://repository.unugiri.ac.id:8443/id/eprint/4777 |