The Proceedings of JSME annual Conference on Robotics and Mechatronics (Robomec)
Online ISSN : 2424-3124
2021
Session ID : 1A1-G16
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Self-localization of the Autonomous Robot for View-based Navigation Using Street View Images
-Improvement of Self-localization Ability by Removing Roads and Sky Regions-
*Nobuhiko MatsuzakiSadayoshi Mikami
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Abstract

Self-localization is essential for navigation and is generally done by GPS at outdoor. However, GPS tends to cause large errors where radio reflection occurs, such as in urban areas, which sometimes prohibits precise self-localization. Meanwhile, a human may collate hisher surroundings with street view images when grasping the current location. To implement this, we have to solve image matching between the current scene and the images in a street view database. However, since the field angle, time, and season between images differ widely, standard pattern matching by feature is difficult. DeepMatching can precisely match images that have differences in lightings and field angles. Nevertheless, DeepMatching tends to misjudge street images because it may find unnecessary feature points in the road and sky. This paper proposes a method that gains image similarity with features like building by excluding road and sky. This paper also investigates appropriate parameters through experiments using various images and resolutions.

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© 2021 The Japan Society of Mechanical Engineers
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