Nusantara of Engineering (NOE)
Vol 7 No 2 (2024): Volume 7 Nomor 2 - 2024

KLASIFIKASI MENGGUNAKAN METODE SUPPORT VECTOR MACHINE UNTUK MENDETEKSI PENYAKIT TANAMAN BAWANG MERAH

Ardiansyah, Abdul Riqza (Unknown)
Danar Putra Pamungkas (Unknown)



Article Info

Publish Date
13 Oct 2024

Abstract

Shallots are a spice that is always present in various dishes in Indonesia, and red onions also contain many diseases that attack the plant. In this research, digital image processing is used to classify shallot diseases. The aim is to make it easier to recognize, identify or analyze the object. The research stage begins with collecting data on shallot plants, then carrying out various scenarios, then in this research we classify shallot objects using the SVM algorithm. The data we use is 250 image data, which are classified as normal shallot diseases, bottom rot, caterpillars, and leaf mold. Testing is based on image size and the amount of training and testing data. The test results show that the SVM algorithm runs well and produces the highest performance, accuracy of 79%, precision of 79% and F1-score of 79%.

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Journal Info

Abbrev

noe

Publisher

Subject

Computer Science & IT Control & Systems Engineering Electrical & Electronics Engineering Industrial & Manufacturing Engineering Mechanical Engineering

Description

This journal discusses the latest trends in computer science that fields information systems, data mining, software engineering, computer networks, artificial intelligence, geographic Information system, Decision support system, multimedia, and others relevant to computer science, information ...