Kalman Filter based Image Re-selection: Handling Collinear and High Co-visibility Situations in Image Retrieval based Visual Localization

Citations

SCOPUS

1

초록

Autonomous driving systems must maintain consistent position estimation across various environments. However, conventional GPS-based position estimation technologies often yield inaccurate results in environments with weak signal reception, necessitating alternative solutions. Image retrieval based visual localization, unaffected by radio wave conditions, presents a robust alternative for accurate position estimation. Image retrieval, widely utilized in visual localization research, typically calculates precise positions by incorporating relative poses. However, accuracy may diminish in collinear and high co-visibility scenarios, requiring supplementary approaches. This paper proposes a method to overcome collinear and high co-visibility situations encountered in image retrieval. The proposed method applies retrieval results to a Kalman filter based system. Compared to conventional methods, the proposed approach demonstrated an average improvement of 11.12 meters in GPS error. © ICROS 2024.

키워드

co-visibilitycollinearimage retrievalKalman filtervisual localization
제목
Kalman Filter based Image Re-selection: Handling Collinear and High Co-visibility Situations in Image Retrieval based Visual Localization
저자
Mun, GiyoungKim, Hakil
DOI
10.5302/J.ICROS.2024.24.0119
발행일
2024
유형
Article
저널명
제어.로봇.시스템학회 논문지
30
9
페이지
954 ~ 959