4.6 Article

DBFN: Double Branch Fusion Network for Vital Components and Defect Detection of Transmission Line

期刊

ADVANCED THEORY AND SIMULATIONS
卷 6, 期 4, 页码 -

出版社

WILEY-V C H VERLAG GMBH
DOI: 10.1002/adts.202200691

关键词

convolutional neural network; target detection; transformer; unmanned aerial vehicle

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This paper proposes a double branch fusion network based on UAV inspection images to improve the detection accuracy of vital components and defects in transmission lines. The network consists of a combination of a convolutional neural network (CNN) and a Transformer network, which extract local and global information respectively. To solve the semantic differences and feature aliasing problem, the paper introduces multiscale convolution and pooling modules. The network also includes a residual-like convolution module and performs feature fusion in multiple regions to enhance the multi-scale adaptability.
A double branch fusion network is proposed based on unmanned aerial vehicle (UAV) inspection images to increase the detection accuracy of vital components and defects in transmission lines. The backbone feature extraction network comprises a combination of a convolutional neural network (CNN) and a Transformer network. To be specific, the CNN should extract local information, and the Transformer network is responsible for the extraction of global information. Besides, global information and local information have semantic differences, while resulting in feature aliasing after fusion. To solve this problem, a multiscale convolution module and a multiscale pooling module are proposed to solve semantic differences and feature aliasing through the interaction between two types of information. In general, the enhanced feature extraction network comprises a residual-like convolution module, which can reduce the loss of detailed information (e.g., edge contours) and further extract high-level semantic information from the deep network. Besides, it performs feature fusion in multiple regions in the enhanced feature extraction network, such that the multi-scale adaptability of the neural network is effectively enhanced. Last, the fused feature information at different scales is decoded, and the final detection results are yielded.

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