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一种基于多帧数据融合匹配的位姿估计方法OA

An optimized pose estimation method based on multi-frame data fusion

中文摘要英文摘要

传统同时定位与地图构建算法中的单帧位姿估计方法会面临IMU数据不可靠、点云特征稀疏等因素导致的位姿估计累计误差、地图重叠与漂移等问题.为解决上述问题,本文聚焦于前端扫描匹配优化策略,提出了一种基于多帧数据融合匹配的位姿估计方法.该方法根据连续帧位姿变化关系实现雷达数据多帧融合;利用激光雷达-惯性测量单元位姿变换加权融合策略进行位姿预测;在扫描匹配阶段引入统计滤波去除点云噪声,并通过二次匹配优化位姿估计.实验结果表明,相较于传统的主流算法,本文方法在真实场景的定位精度分别提升了28.4%、30.1%、65.3%,有效减小了累计误差,提升了轨迹估计精度与建图质量.本研究为移动机器人在建图和自身定位过程中位姿不准及累积误差过大提供了新的解决方案.

Traditional single-frame pose estimation methods in simultaneous localization and mapping(SLAM)often suffer from cumulative errors,map misalignment,and trajectory drift due to unreliable inertial measurement unit(IMU)data and sparse point cloud features.To address these issues,this study proposes an enhanced pose estimation method based on multi-frame data fusion and optimized front-end scan matching.The proposed approach performs multi-frame fusion of LiDAR data by exploiting pose transformation relationships between consecutive frames.A weighted LiDAR-IMU fusion strategy is employed for pose prediction.During scan matching,statistical filtering is introduced to remove point cloud noise,and pose estimation is further refined through a secondary matching process.Experimental results demonstrate that,compared to mainstream conventional algorithms,the proposed method improves localization accuracy in real-world scenarios by 28.4%,30.1%,and 65.3%,respectively,effectively reducing cumulative errors and enhancing trajectory estimation accuracy and mapping quality.This study provides a novel solution for enhancing pose estimation accuracy and mitigating cumulative errors in mobile robots mapping and self-localization tasks.

尹裕林;张兴兰;欧阳奇

重庆理工大学 计算机科学与工程学院,重庆 400054重庆大学 自动化学院,重庆 400044重庆大学 自动化学院,重庆 400044

航空航天

同步定位与地图构建多帧数据融合扫描匹配位姿估计

simultaneous localization and mappingmulti-frame fusionscan matchingpose estimation estimation

《重庆大学学报》 2026 (6)

82-92,11

中央高校基本科研业务费国防专项(2024CDJGF-053).Supported by Central Fund for Basic Scientific Research at Central Universities Defense Project(2024CDJGF-053).

10.11835/j.issn.1000-582X.2026.06.008

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