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Waste image classification based on transfer learning and convolutional neural network

机译:基于转移学习和卷积神经网络的废像分类

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摘要

The rapid economic and social development has led to a rapid increase in the output of domestic waste. How to realize waste classification through intelligent methods has become a key factor for human beings to achieve sustainable development. Traditional waste classification technology has low efficiency and low accuracy. To improve the efficiency and accuracy of waste classification processing, this paper proposes a DenseNetl69 waste image classification model based on transfer learning. Because of the disadvantages of the existing public waste dataset, such as uneven distribution of data, single background, obvious features, and small sample size of the waste image, the waste image dataset NWNU-TRASH is constructed. The dataset has the advantages of balanced distribution, high diversity, and rich background, which is more in line with real needs. 70% of the dataset is used as the training set and 30% as the test set. Based on the deep learning network DenseNet169 pre-trained model, we can form a DenseNetl69 model suitable for this experimental dataset. The experimental results show that the accuracy of classification is over 82% in the DenseNetl69 model after the transfer learning, which is better than other image classification algorithms.
机译:经济快速和社会发展导致国内废物产量迅速增加。如何通过智能方法实现废物分类已成为实现可持续发展的人类的关键因素。传统的废物分类技术效率低,准确性低。为了提高废物分类处理的效率和准确性,本文提出了一种基于转移学习的Densenetl69废物图像分类模型。由于现有公共废物数据集的缺点,如数据的不均匀分布,单个背景,明显的特征和垃圾图像的小样本大小,构造了废物图像数据集NWNU垃圾。该数据集具有平衡,多样化和丰富的背景的优点,这与真正的需求相符合。 70%的数据集用作训练集和30%作为测试集。基于深度学习网络Densenet169预训练模型,我们可以形成适合该实验数据集的Densenetl69模型。实验结果表明,转移学习后,DensenetL69模型的分类精度超过82%,比其他图像分类算法更好。

著录项

  • 来源
    《Waste Management》 |2021年第11期|150-157|共8页
  • 作者单位

    Department of Computer Science and Engineering Northwest Normal University Lanzhou Gansu Province 730070 China;

    Department of Computer Science and Engineering Northwest Normal University Lanzhou Gansu Province 730070 China;

    School of Computer Science and Artificial Intelligence Lanzhou Institute of Technology Lanzhou Gansu Province 730050 China;

    College of Computing Illinois Institute of Technology Chicago IL 60616 USA;

    Xi'an University of Posts&Telecommunications Xi'an Shanxi Province 710121 China;

    Department of Computer Science and Engineering Northwest Normal University Lanzhou Gansu Province 730070 China;

  • 收录信息
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类
  • 关键词

    Transfer learning; Image recognition; Recyclable waste classification; Deep learning; DenseNet;

    机译:转移学习;图像识别;可回收废物分类;深度学习;Densenet.;

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