Extended Kalman Filter-Based Visual Odometry in Dynamic Environments Using Modified 1-Point RANSAC

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초록

Visual odometry in dynamic environments is particularly challenging, as moving objects often cause incorrect data associations and large pose estimation errors. Traditional EKF-based VO methods rely on 1-point RANSAC to reject outliers under the assumption of a static world, thereby discarding dynamic landmarks as noise. However, in practice, outliers may arise not only from measurement errors but also from the motion of objects. To address this issue, we propose a modified 1-point RANSAC framework that detects dynamic objects and leverages both static and dynamic landmarks for ego-motion estimation. Inspired by adaptive strategies observed in biological vision systems, our approach integrates EKF-based state estimation with dynamic object tracking to achieve simultaneous ego-motion and object-motion estimation, improving robustness in complex and dynamic scenes.

키워드

visual odometryExtended Kalman Filtercomputer visionSLAM
제목
Extended Kalman Filter-Based Visual Odometry in Dynamic Environments Using Modified 1-Point RANSAC
저자
Lee, JinheeKang, Jaeyoung
DOI
10.3390/biomimetics10100710
발행일
2025-10
유형
Article
저널명
BIOMIMETICS
10
10