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Automatic coverage selection for surface-based visual localisation

Authors :
Mount, James
Dawes, Les
Milford, Michael
Mount, James
Dawes, Les
Milford, Michael
Source :
IEEE Robotics and Automation Letters
Publication Year :
2019

Abstract

Localization is a critical capability for robots, drones and autonomous vehicles operating in a wide range of environments. One of the critical considerations for designing, training or calibrating visual localization systems is the coverage of the visual sensors equipped on the platforms. In an aerial context for example, the altitude of the platform and camera field of view plays a critical role in how much of the environment a downward facing camera can perceive at any one time. Furthermore, in other applications, such as on roads or in indoor environments, additional factors such as camera resolution and sensor placement altitude can also affect this coverage. The sensor coverage and the subsequent processing of its data also has significant computational implications. In this paper we present for the first time a set of methods for automatically determining the trade-off between coverage and visual localization performance, enabling the identification of the minimum visual sensor coverage required to obtain optimal localization performance with minimal compute. We develop a localization performance indicator based on the overlapping coefficient, and demonstrate its predictive power for localization performance with a certain sensor coverage. We evaluate our method on several challenging real-world datasets from aerial and ground-based domains, and demonstrate that our method is able to automatically optimize for coverage using a small amount of calibration data. We hope these results will assist in the design of localization systems for future autonomous robot, vehicle and flying systems.

Details

Database :
OAIster
Journal :
IEEE Robotics and Automation Letters
Notes :
application/pdf
Publication Type :
Electronic Resource
Accession number :
edsoai.on1255562137
Document Type :
Electronic Resource