Intelligent Waste Management System for Recycling and Resource Optimization

A. Sleem, Ibrahim Elhenawy
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引用次数: 0

Abstract

This paper proposes a deep learning-based intelligent waste management system that can accurately classify waste types and optimize waste disposal processes. The proposed system utilizes a convolutional model to concisely identify the waste type from images captured by a camera system. Our system uses intelligent data augmentation to perform large datasets of waste item images and achieves a high classification accuracy rate. The waste types are classified into several categories, including glass, cardboard, metal, plastic, paper, and trash. Experimental results show that our system achieves high accuracy rates in waste classification and improves waste disposal efficiency compared to traditional waste management systems. Our system has the potential to significantly reduce the negative impact of waste on the environment and to promote sustainable waste management practices.
智能废物回收和资源优化管理系统
本文提出了一种基于深度学习的智能废物管理系统,可以准确分类废物类型并优化废物处理流程。该系统利用卷积模型从相机系统捕获的图像中简明地识别废物类型。我们的系统采用智能数据增强技术对大数据集的废弃物图像进行处理,达到了较高的分类准确率。垃圾类型分为几类,包括玻璃、纸板、金属、塑料、纸张和垃圾。实验结果表明,与传统的垃圾管理系统相比,该系统在垃圾分类方面达到了较高的准确率,提高了垃圾处理效率。我们的系统有潜力大幅减少废物对环境的负面影响,并促进可持续的废物管理措施。
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CiteScore
1.70
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0.00%
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