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Are State-of-the-art Visual Place Recognition Techniques any Good for Aerial Robotics?

16 April 2019
Mubariz Zaffar
Ahmad Khaliq
Shoaib Ehsan
Michael Milford
Kostas Alexis
Klaus McDonald-Maier
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Abstract

Visual Place Recognition (VPR) has seen significant advances at the frontiers of matching performance and computational superiority over the past few years. However, these evaluations are performed for ground-based mobile platforms and cannot be generalized to aerial platforms. The degree of viewpoint variation experienced by aerial robots is complex, with their processing power and on-board memory limited by payload size and battery ratings. Therefore, in this paper, we collect 888 state-of-the-art VPR techniques that have been previously evaluated for ground-based platforms and compare them on 222 recently proposed aerial place recognition datasets with three prime focuses: a) Matching performance b) Processing power consumption c) Projected memory requirements. This gives a birds-eye view of the applicability of contemporary VPR research to aerial robotics and lays down the the nature of challenges for aerial-VPR.

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