基于深度学习的可回收垃圾分类

Yulong He, Tianjian Li, Jianchao Huang, Zejun Zhang, Zhuangzhuang Wang, Zhiming Cai
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引用次数: 0

摘要

垃圾分类是建设生态城市的重要组成部分,近年来受到越来越多的关注。传统的人工垃圾分类效率和准确率较差。本文基于深度学习,提出垃圾分类算法I-ResNet50对ResNet50网络进行改进,并对原始数据进行几何变换。测试集结果表明,I-ResNet50算法可以达到62.6%的分类准确率,与原方法相比准确率有了较大的提高。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Deep learning based recyclable waste classification
Waste classification has attracted more and more attention in recent years, which is an important part of building an eco-friendly city. Traditional manual garbage classification has poor efficiency and accuracy. In this paper, based on deep learning, the garbage classification algorithm I-ResNet50 is proposed to improve the ResNet50 network, and the geometric transformation of the original data is performed. The test set results show that the I-ResNet50 algorithm can achieve a classification accuracy of 62.6%, which is a substantial improvement in accuracy compared with the original method.
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