Robust Keypoint Learning Framework for Visual Odometry in Dynamic Environments

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초록

Estimating 6-DoF camera motion in dynamic environments remains challenging because of the influence of moving objects. Traditional feature-based methods and self-supervised approaches struggle with distinguishing dynamic elements from static scenes. To tackle this problem, we propose a robust keypoint detection network designed for pose estimation in dynamic scenes, leveraging cycle consistency and pixel correspondences to guide extracting static keypoints. Our method is validated on highly dynamic sequences from the KITTI multi-object tracking dataset, demonstrating improved performance in dynamic environments. © 2024 IEEE.

키워드

Feature-wise correspondencesPose estimation
제목
Robust Keypoint Learning Framework for Visual Odometry in Dynamic Environments
저자
Kim, SujiShim, Inwook
DOI
10.1109/ISAP62502.2024.10846606
발행일
2024
유형
Proceedings Paper
저널명
ISAP 2024 - International Symposium on Antennas and Propagation