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    • 摘要: 针对动态深度相机单帧视野受限问题,及多帧拼接中的噪声扰动,本文提出了一种基于多视角融合的大型3D目标的位姿测量与重建方法。该方法搭建了深度相机的性能梯度分层模型,采用基于点云法向量的多视角扫描位姿预测,并以高度约束的RANSAC (HC-RANSAC)拟合目标三维模型。以机械臂末端搭载的深度相机进行多角度扫描测量,并将多视角扫描采样所获数据在局部基准坐标系下进行目标模型重建。实验结果表明:与固定深度相机或基于云台视觉的三维重建相比,所提方法具有更大的重建视野和良好的重建精度,可在近距离范围中对大目标进行重建,解决了视野与精度难以兼顾的问题。

       

      Abstract: The dynamic depth camera has a limited single-frame field of view, and there is noise disturbance when stitching multiple frames. To deal with the aforementioned problems, a large-scale 3D target pose measurement and reconstruction method based on multi-view fusion is presented. This approach builds a hierarchical model of the depth camera's performance gradient, predicts the pose with a multi-view scanning method based on point cloud normal vectors, and fits 3D models of targets with height constraints RANSAC (height constraints RANSAC, HC-RANSAC). The depth camera installed on the end of the robotic manipulator scans and measures the target from various angles, and the sampled data is utilized to reconstruct the target model in the local coordinate system. Experimental results reveal that when compared to fixed-depth cameras and classical reconstruction approaches based on pan-tilt vision, the proposed approach has a larger reconstruction field of view and higher reconstruction accuracy. It can reconstruct huge targets at a close range, and get an excellent balance between field of vision and precision.