Abstract

With the rapid development of deep learning technology, a variety of network models for classification have been proposed, which is beneficial to the realization of intelligent waste classification. However, there are still some problems with the existing models in waste classification such as low classification accuracy or long running time. Aimed at solving these problems, in this paper, a waste classification method based on a multilayer hybrid convolution neural network (MLH-CNN) is proposed. The network structure of this method is similar to VggNet but simpler, with fewer parameters and a higher classification accuracy. By changing the number of network modules and channels, the performance of the proposed model is improved. Finally, this paper finds the appropriate parameters for waste image classification and chooses the optimal model as the final model. The experimental results show that, compared with some recent works, the proposed method has a simpler network structure and higher waste classification accuracy. A large number of experiments in a TrashNet dataset show that the proposed method achieves a classification accuracy of up to 92.6%, which is 4.18% and 4.6% higher than that of some state-of-the-art methods, and proves the effectiveness of the proposed method.

Highlights

  • Waste classification and recycling plays a very important role in daily life

  • We analyze the characteristics of the TrashNet dataset and give the reason why the classical convolution neural network based on fine-tuning is not suitable for waste image classification; We proposed a multilayer hybrid convolutional neural network method (MLH-CNN), which can provide the best classification performance by changing the number of network modules and channels

  • This paper discussed the waste classification methods in previous studies, which were mainly based on two methods, i.e., traditional methods and neural network methods

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Summary

Introduction

Waste classification and recycling plays a very important role in daily life. With the improvement of people’s living standards, an increasing amount of daily waste is produced.Facing the situation of increasing waste discharge and environmental degradation, how to classify waste accurately, maximize the utilization of waste resources, and improve the quality of the living environment are urgent issues of common concern in the world. Waste classification and recycling plays a very important role in daily life. With the improvement of people’s living standards, an increasing amount of daily waste is produced. Facing the situation of increasing waste discharge and environmental degradation, how to classify waste accurately, maximize the utilization of waste resources, and improve the quality of the living environment are urgent issues of common concern in the world. Waste classification technology is used to classify and control waste at the source, turning it into resources again through later classification and recycling. With the development of artificial intelligence, deep learning and intelligent technologies have been widely used. Intelligent waste classification has become an important technology in waste management. Intelligent waste classification can be applied to mobile devices, intelligent recyclable trash cans, etc

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