Label-Free Retraining for Improved Ground Plane Segmentation

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Uzyıldırım, Furkan Eren
Özuysal, Mustafa

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Abstract

Due to increased potential applications of unmanned aerial vehicles over urban areas, algorithms for the safe landing of these devices have become more critical. One way to ensure a safe landing is to locate the ground plane regions of images captured by the device camera that are free of obstacles by deep semantic segmentation networks. In this paper, we study the performance of semantic segmentation networks trained for this purpose at a particular altitude and location. We show that a variation in altitude and location significantly decreases network performance. We then propose an approach to retrain the network using only a new set of images and without marking the ground regions in this novel training set. Our experiments show that we can convert a network’s operating range from low to high altitudes and vice versa by label-free retraining.

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Keywords

Deep learning, Ground plane segmentation, Safe landing zone, Unmanned aerial vehicles

Fields of Science

03 medical and health sciences, 0302 clinical medicine, 0202 electrical engineering, electronic engineering, information engineering, 02 engineering and technology

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1

Volume

17

Issue

Start Page

2465

End Page

2471
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