Abstract

Pins are standard fasteners in power transmission lines, and the hidden dangers of pins falling off dramatically affects their safe operation. If a pin is missed, it is called pin defects in this paper. As the pin is a small target and has a complex background, traditional detection algorithms were used to identify pin defects from aerial images which suffer from poor accuracy and low efficiency. This paper proposed a target detection method based on cascaded convolutional neural networks. First, a small-scale shallow full convolutional neural network was used to obtain the region of interest; then, a deeper convolutional neural network conducted target classification and positioning on the obtained region of interest. Next, a nonlinear multilayer perceptron was introduced, the convolution kernel was decomposed, and the multi-scale feature maps were fused. At this point, an angle variable was added to the classification cross-entropy loss function. Multi-task learning and offline hard sample mining strategies were used in the training phase. The proposed method was tested on a self-built pin dataset and the remote sensing image RSOD dataset, and the experimental results proved its effectiveness. Our method can accurately identify pin defects in aerial images, thereby solving the engineering application problem of pin defect detection in transmission lines.

Highlights

  • Power fittings play an indispensable role in stable, safe, and reliable power system operation [1], [2]

  • Pin defect detection is of great significance for maintaining the safe operation of the power system

  • According to the listed problems, this paper proposes a pin defect detection method for aerial images based on a multi-scale cascaded convolutional neural network

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Summary

INTRODUCTION

Power fittings play an indispensable role in stable, safe, and reliable power system operation [1], [2]. In the traditional image inspection method, transmission line defect detection is based on manually designed features. Literature [10] used a convolutional neural network to extract image sample features to identify self-explosion defects of insulators; literature [11], [12] compared and analyzed the recognition performance of target detection algorithms such as Faster RCNN, SPPnet, and DPM, and investigated the impact on performance brought by key power components of transmission lines, such as vibration-dampers and insulators. With the existing target detection methods, it is tricky to detect pin defects in large-scale aerial transmission line images with complex backgrounds. According to the listed problems, this paper proposes a pin defect detection method for aerial images based on a multi-scale cascaded convolutional neural network. The proposed method presents advantages for application in mobile devices

CASCADED CONVOLUTIONAL NEURAL NETWORK
IMPROVED CONVOLUTIONAL LAYER STRUCTURE
SAMPLE TRAINING
Findings
CONCLUSION

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