Valuation of Svm Kernel Performance in Organic and Non-Organic Waste Classification

Dahyoung Yenuargo, Muhamad Fatchan, Wahyu Hadikristanto, Universitas Pelita Bangsa
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Abstract

In an era of increasing concern for environmental sustainability, waste management remains an important global issue. Efficient waste classification, in particular distinguishing between organic and recyclable materials, is essential for reducing environmental impact. Traditional manual classification methods are often error-prone and inefficient. This research evaluates the performance of SVM models with RBF and Polynomial kernels for waste classification, using SqueezeNet for feature extraction. Datasets from Kaggle were preprocessed and augmented to improve model training. The experimental results show that the SVM model with RBF kernel outperforms the Polynomial kernel in classifying organic and recyclable waste, with an accuracy of 97.9% compared to 97.3% for the Polynomial kernel. This finding underscores the importance of kernel selection and parameter tuning in optimising SVM models for non-linear classification tasks. This research contributes to the development of more efficient and accurate waste classification technologies, promoting better waste management practices. Further research is recommended to explore advanced feature extraction methods and expand the scope of classification to cover a wider range of waste categories.
评估 Svm 内核在有机和非有机废物分类中的性能
在环境可持续性日益受到关注的时代,废物管理仍然是一个重要的全球性问题。高效的废物分类,尤其是区分有机物和可回收物,对于减少环境影响至关重要。传统的人工分类方法往往容易出错且效率低下。本研究评估了使用 RBF 和多项式核的 SVM 模型在垃圾分类方面的性能,并使用 SqueezeNet 进行特征提取。对来自 Kaggle 的数据集进行了预处理和增强,以改进模型训练。实验结果表明,采用 RBF 内核的 SVM 模型在有机垃圾和可回收垃圾的分类方面优于多项式内核,准确率为 97.9%,而多项式内核的准确率为 97.3%。这一发现强调了在非线性分类任务中优化 SVM 模型时选择核和调整参数的重要性。这项研究有助于开发更高效、更准确的废物分类技术,促进更好的废物管理实践。建议进一步开展研究,探索先进的特征提取方法,并扩大分类范围,以涵盖更广泛的废物类别。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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