Abstract

Power line detection plays an important role in an automated UAV-based electricity inspection system, which is crucial for real-time motion planning and navigation along power lines. Previous methods which adopt traditional filters and gradients may fail to capture complete power lines due to noisy backgrounds. To overcome this, we develop an accurate power line detection method using convolutional and structured features. Specifically, we first build a convolutional neural network to obtain hierarchical responses from each layer. Simultaneously, the rich feature maps are integrated to produce a fusion output, then we extract the structured information including length, width, orientation and area from the coarsest feature map. Finally, we combine the fusion output with structured information to get a result with clear background. The proposed method fully exploits multiscale and structured prior information to conduct both accurate and efficient detection. In addition, we release two power line datasets due to the scarcity in the public domain. The method is evaluated on the well-annotated power line datasets and achieves competitive performance compared with state-of-the-art methods.

Highlights

  • With the rapid development of UAV techniques in electricity inspection, a growing number of power line detection methods have been developed in recent years

  • We evaluate our method and the baselines on the test set of PLDM dataset with model trained on the training set of PLDU dataset

  • Compared with RCF, the improvement of our method on optimal dataset scale threshold (ODS) and optimal image scale threshold (OIS) F1-measure is significant, which proves the robustness of the structured information

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Summary

Objectives

Our objective is to develop an accurate and efficient framework for the task so as to apply it on onboard platform

Results
Discussion
Conclusion
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