基于几何-运动误差联合模型和轨迹预测的动态VSLAM算法
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武汉科技大学人工智能与自动化学院 武汉 430081

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TN98

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国家自然科学基金(62303359)项目资助


Dynamic VSLAM algorithm based on joint geometry-motion error model and trajectory prediction
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School of Artificial Intelligence and Automation, Wuhan University of Science and Technology,Wuhan 430081,China

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    摘要:

    针对高动态环境中目标遮挡导致视觉同时定位和地图构建系统存在定位精度下降甚至失效的问题,本文提出一种基于几何-运动误差联合模型及轨迹预测的动态VSLAM算法。不同于依赖语义分割或光流估计方法,本文通过融合相机与IMU信息,将对极约束几何误差与IMU预积分运动误差联合建模,并结合概率模型实现动态目标检测与遮挡状态判断,在遮挡场景下保持较高鲁棒性。为提升动态目标跟踪的连续性与精度,进一步引入基于扩展卡尔曼滤波的轨迹预测对目标位姿进行估计。同时,设计联合因子图模型优化相机、地图点与动态目标特征点,并设计动态平滑运动因子以抑制目标运动突变,从而减少累计误差。最后在KITTI跟踪数据集与真实场景的实验表明,相较于基于几何约束和目标跟踪的动态SLAM方法,本文算法在高动态环境中目标遮挡场景下具有良好的位姿估计精度与动态目标跟踪性能。

    Abstract:

    Aiming to address the problem of decreased localization accuracy or even failure in visual simultaneous localization and mapping systems caused by object occlusion in highly dynamic environments, this paper proposes a dynamic VSLAM algorithm based on a joint geometric-motion error model and trajectory prediction. Unlike methods that rely on semantic segmentation or optical flow estimation, this approach fuses camera and IMU information to jointly model the epipolar geometric error and IMU pre-integrated motion error, and employs a probabilistic model for dynamic object detection and occlusion state estimation, maintaining high robustness under occluded conditions. To improve the continuity and accuracy of dynamic object tracking, an Extended Kalman Filter-based trajectory prediction is introduced for object pose estimation. Meanwhile, a joint factor graph model is constructed to optimize the camera, map points, and dynamic object feature points, where a dynamic motion-smoothing factor is designed to suppress abrupt object motion and reduce accumulated errors. Finally, experiments on the KITTI tracking dataset and real-world scenarios demonstrate that, compared with geometry-based and object-tracking-based dynamic SLAM methods, the proposed algorithm achieves superior pose estimation accuracy and dynamic object tracking performance in object occlusion scenarios within highly dynamic environments.

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梁若雨,黄卫华,颜如钰,李睿民.基于几何-运动误差联合模型和轨迹预测的动态VSLAM算法[J].电子测量技术,2026,49(5):229-238

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  • 在线发布日期: 2026-05-08
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