An Accurate and Real-time Self-blast Glass Insulator Location Method Based On Faster R-CNN and U-net with Aerial Images
The location of broken insulators in aerial images is a challenging task. This paper, focusing on the self-blast glass insulator, proposes a deep learning solution. We address the broken insulators location problem as a low signal-noise-ratio image location framework with two modules: 1) object dete...
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Zusammenfassung: | The location of broken insulators in aerial images is a challenging task.
This paper, focusing on the self-blast glass insulator, proposes a deep
learning solution. We address the broken insulators location problem as a low
signal-noise-ratio image location framework with two modules: 1) object
detection based on Fast R-CNN, and 2) classification of pixels based on U-net.
A diverse aerial image set of some grid in China is tested to validated the
proposed approach. Furthermore, a comparison is made among different methods
and the result shows that our approach is accurate and real-time. |
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DOI: | 10.48550/arxiv.1801.05143 |