Waste classification using support vector machine with SIFT-PCA feature extraction

Puspaningrum, Adita Putri and Endah, Sukmawati Nur and Sasongko, Priyo Sidik and Kusumaningrum, Retno and ., Khadijah and ., Rismiyati and Ernawan, Ferda (2020) Waste classification using support vector machine with SIFT-PCA feature extraction. In: IEEE 4th International Conference on Informatics and Computational Sciences (ICICoS 2020) , 10-11 November 2020 , Semarang, Indonesia. pp. 1-6.. ISBN 978-1-7281-9526-1

[img]
Preview
Pdf
Waste classification using support vector1.pdf

Download (259kB) | Preview

Abstract

Population growth and changes in public consumption patterns cause increases in the volume, types and characteristics of the waste. This increase requires waste management effort. One of the efforts that can be performed is by separating waste into several types. Upon waste separation, the waste can be proceeded to the waste recycling process. Current technological advances have supported automatic waste sorting so that the waste sorting process is easier and faster to do. This research proposes waste image classification to support automatic waste sorting using Support Vector Machine (SVM) classification algorithm and SIFT-PCA (Scale Invariant Feature Transform - Principal Component Analysis) feature extraction. SIFT-PCA is a combination of SIFT to extract feature data and PCA to reduce the dimensionality of the resulting feature data. The data used in this research is Trashnet datasets. The performance of the SVM classification using SIFT feature is compared with the similar algorithm with SIFT-PCA combined feature. The experimental results show that classification using SIFT feature extraction achieve accuracy of 62%. This accuracy is higher than experiment with using SIFT-PCA feature extraction.

Item Type: Conference or Workshop Item (Lecture)
Uncontrolled Keywords: Image classification, waste, SVM, SIFT, PCA, Trashnet, dimensional reduction
Subjects: Q Science > QA Mathematics > QA75 Electronic computers. Computer science
Faculty/Division: Faculty of Computing
Depositing User: Noorul Farina Arifin
Date Deposited: 29 Dec 2020 03:33
Last Modified: 29 Dec 2020 03:33
URI: http://umpir.ump.edu.my/id/eprint/30353
Download Statistic: View Download Statistics

Actions (login required)

View Item View Item