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Transmission line detection in aerial images: An instance segmentation approach based on multitask neural networks
Affiliation:1. Tallinn University of Technology, Department of Electrical Power Engineering and Mechatronics, Estonia;2. The University of the West Indies, Department of Electrical & Computer Engineering, Trinidad and Tobago
Abstract:Camera-based transmission line detection (TLD) is a fundamental and crucial task for automatically patrolling powerlines by aircraft. Motivated by instance segmentation, a TLD algorithm is proposed in this paper with a novel deep neural network, i.e., CableNet. The network structure is designed based on fully convolutional networks (FCNs) with two major improvements, considering the specific appearance characteristics of transmission lines. First, overlaying dilated convolutional layers and spatial convolutional layers are configured to better represent continuous long and thin cable shapes. Second, two branches of outputs are arranged to generate multidimensional feature maps for instance segmentation. Thus, cable pixels can be detected and assigned cable IDs simultaneously. Multiple experiments are conducted on aerial images, and the results show that the proposed algorithm obtains reliable detection performance and is superior to traditional TLD methods. Meanwhile, segmented pixels can be accurately identified as cable instances, contributing to line fitting for further applications.
Keywords:Transmission line detection  Deep neural networks  Convolutional neural networks
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