Abstract

In view of the low accuracy and poor processing capacity of traditional power equipment image recognition methods, this paper proposes a power equipment image recognition method based on a dual-channel convolutional neural network (DC-CNN) model and random forest (RF) classification. In the aspect of feature extraction, the DC-CNN model extracts the characteristics of power equipment through two independent CNN models. In the aspect of the recognition algorithm, by referring to the advantages of the traditional machine learning method and incorporating the advantages of the RF, an RF classification method incorporating deep learning is proposed. Finally, the proposed DC-CNN model and RF classification method are used to classify images of various types of power equipment. The results show that the proposed methods can be effectively applied to the image recognition of various types of power equipment, and they greatly improve the recognition rate of power equipment images.

Highlights

  • The object recognition technology—which refers to the use of computers to extract features and realize analysis, description, and recognition of images [1,2,3,4,5]—has been widely used in various fields

  • Due to the shortcomings of the traditional recognition methods and the inapplicability of the deep learning method in power system problems, this paper proposes a dual-channel convolutional neural network for power edge image recognition, the main contributions of this paper are summarized as follows

  • This paper proposes a dual-channel CNN (DC-CNN) model to extract the characteristics of power equipment through two independent CNN models

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Summary

Introduction

The object recognition technology—which refers to the use of computers to extract features and realize analysis, description, and recognition of images [1,2,3,4,5]—has been widely used in various fields. DC-CNN model To improve the recognition accuracy of the AlexNet model, reduce the training time of model, and extract the features of the different characteristics of the equipment, this paper makes an extension and modification based on the AlexNet network structure by proposing a DC-CNN model.

Results
Conclusion
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