基于多传感器融合的动态物体移除三维重建系统

Chenxi Zhao, Zeliang Liu, Zihao Pan, Lei Yu
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摘要

目前,无人移动机器人自主导航的关键技术之一是 SLAM,但它在实际应用中面临许多挑战。这些挑战包括缺乏纹理、传感器性能下降以及动态室外环境中移动物体的干扰,所有这些都会对绘图系统产生影响。为了解决这些问题,本文提出了一个激光雷达、视觉相机和惯性导航数据的框架,从而实现融合和动态物体移除。该系统由三个子模块组成:激光雷达-惯性模块(LIM)、视觉-惯性模块(VIM)和动态物体移除模块(DORM)。LIM 和 VIM 相互协助,激光雷达点云为全局体素图提供三维信息,摄像头提供像素级色彩信息。同时,DORM 执行同步动态物体检测,从全局地图中移除动态物体。该系统利用状态和观测模型构建多传感器因子图,并利用最小二乘法获得最优解。此外,本文还采用三角形描述符和捆绑调整方法进行闭环检测,以减少累积误差并保持一致性。实验结果表明,该系统可以在各种复杂场景中执行干净的状态估计、动态移除和场景重建。
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A Dynamic Object Removing 3D Reconstruction System Based on Multi-Sensor Fusion
Currently, one of the key technologies for autonomous navigation of unmanned mobile robots is SLAM, which faces many challenges in practical applications. These challenges include a lack of texture, deterioration in sensor performance, and interference from moving objects in dynamic outdoor environments, all of which have an impact on the mapping system. To address these issues, this paper proposes a framework for lidar, vision camera, and inertial navigation data, resulting in fusion and dynamic object removing. The system consists of three sub-modules: the Lidar-Inertial Module (LIM), the Visual-Inertial Module (VIM), and the Dynamic-Object-Removing Module (DORM). LIM and VIM assist each other, with lidar point clouds providing three-dimensional information for the global voxel map and the camera providing pixel-level color information. At the same time, the DORM performs synchronous dynamic object detection to remove dynamic objects from the global map. The system constructs a multi-sensor factor graph using the state and observation models, and the optimal solution is obtained using least squares. Furthermore, this paper employs triangle descriptors and bundle adjustment methods for loop closure detection in order to reduce accumulated errors and maintain consistency. Experimental results demonstrate that the system can perform clean state estimation, dynamic removing and scene reconstruction in a variety of complex scenarios.
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