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Study of RGB-D point cloud registration method guided by color information

机译:彩色信息引导RGB-D点云注册方法研究

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The RGB-D camera can simultaneously acquire the color and depth information of the target surface, and has been widely used in 3D modeling, machine vision and other related fields. The traditional point cloud registration algorithm only considers the geometric information, it's operating efficiency is low and the initial value requirement is high. This paper presents a new approach to align different frames point cloud obtained by RGB-D camera, which considers visual textures and geometric information simultaneously. Firstly, detect and match feature points on RGB images, and use RANSAC algorithm to eliminate the wrong matches. Then, convert the 2d matching pairs to 3d feature point cloud based on the depth camera model, and these point pairs without deep data are deleted. Finally, calculate the camera pose parameters by performing the iterative closest point(ICP) on feature point cloud, and apply the calculated pose parameters to the whole frame data. The experimental results show that, (1) In SIFT, SURF, and ORB feature point extraction operators, ORB has the best performance for point cloud registration. (2) The proposed algorithm has a high registration accuracy, the rotation and transform estimation error are less than 0.0097 and 4.2mm respectively. (3) The algorithm also significantly improves the convergence speed, only require 0.138 seconds, and it can meet the real-time processing requirements. (4) The algorithm is insensitive to the initial values and has strong robustness.
机译:RGB-D相机可以同时获取目标表面的颜色和深度信息,并已广泛用于3D建模,机器视觉和其他相关领域。传统的点云登记算法仅考虑几何信息,它的操作效率低,初始值要求很高。本文介绍了一种新的方法来对齐由RGB-D相机获得的不同帧点云,其同时考虑视觉纹理和几何信息。首先,检测和匹配RGB图像上的特征点,并使用Ransac算法消除错误的匹配。然后,将2D匹配对基于深度摄像机模型将2D匹配对进行3D特征点云,并且删除了没有深度数据的这些点对。最后,通过在特征点云上执行迭代最近的点(ICP)来计算相机姿势参数,并将计算的姿势参数应用于整个帧数据。实验结果表明,(1)在Sift,Surf和Orb特征点提取运算符中,ORB具有最佳性能的点云注册。 (2)所提出的算法具有高的注册精度,旋转和变换估计误差分别小于0.0097和4.2mm。 (3)算法也显着提高了收敛速度,只需要0.138秒,并且它可以满足实时处理要求。 (4)算法对初始值不敏感并具有强大的鲁棒性。

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