Dry Waste Classification Using Quadratic Support Vector Machine for Intelligent Waste Management System

Ahmad Fahim Naqib, Ahmad Faisal, Jabbar Al-Fattah, Yahaya
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Abstract

There has been a serious increment in solid waste in the past decades due to rapid urbanization and industrialization. Therefore, it becomes a big issue and challenges which need to have a great concern, as accumulation of solid waste would result in environmental pollution. Recycling is a method which has been prominent in order to deal with the problems, as it is assumed to be economically and environmentally beneficial. It is important to have a wide number of intelligent waste management system and several methods to overcome this challenge. This journal explores the application of image processing techniques in recyclable variety type of dry waste. An automated vision-based recognition system is modelled on image analysis which involves image acquisition, feature extraction, and classification. In this study, an intelligent waste material classification system is proposed to extract features from each dry waste image. The Quadratic Support Vector Machine, Cubic Support Vector Machine, Fine K-Nearest Neighbor, and Weighted K-Nearest Neighbor were used to classify the waste into different type such as bottle, tin, crumble, and flat waste sample. A Quadratic Support Vector Machine (QSVM) classifier led to promising results with accuracy of training, 89.7%.
基于二次支持向量机的干垃圾分类智能管理系统
在过去的几十年里,由于快速的城市化和工业化,固体废物的数量急剧增加。因此,固体废物的积累会造成环境污染,这是一个需要高度关注的大问题和挑战。回收是一种突出的方法,以解决问题,因为它被认为是经济和环境有益的。重要的是要有广泛的智能废物管理系统和几种方法来克服这一挑战。本期刊探讨了图像处理技术在可回收品种型干废物中的应用。基于视觉的自动识别系统以图像分析为基础,包括图像采集、特征提取和分类。在本研究中,提出了一种智能废物分类系统,从每个干废物图像中提取特征。利用二次支持向量机、三次支持向量机、精细k近邻、加权k近邻等方法将垃圾分类为瓶子、锡、碎、扁平等不同类型的垃圾样本。二次支持向量机(QSVM)分类器的训练准确率达到89.7%。
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