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Preprocessing and Modeling for Visual-based 3D Indoor Scene Reconstruction

机译:基于视觉基于3D室内场景重建的预处理和建模

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In this paper, we present a visual-based method for 3D modeling of indoor scene via mobile robot equipped with a depth camera, which can both acquire color image and dense point cloud. The raw data obtained from depth camera are noisy and non-uniformed, so a set of preprocessing methods, which consists down-sampling with volumetric pixel grid filter, statistical-based outlier removal, moving least square-based interpolation, is conducted to enhance and consolidate the data. A combination of scale invariant feature transform (SIFT) features and iterative closet point (ICP) are performed to estimate the pose of robot for frame alignment. The matched SIFT feature pairs calculated on color images of two frames are used to compute a rigid transformation matrix, which is considered as the initial transformation matrix estimation of ICP algorithm. A dense map is built by aligning of multiple frames, and a compact surface model is achieved by surface reconstruction on dense map using greedy triangulation method. Experiment result showed the method is easy to apply for indoor scene reconstruction and can be executed in nearly real time.
机译:在本文中,我们通过配备有深度摄像头的移动机器人提供一种基于视觉的室内场景建模方法,可以获得彩色图像和密集点云。从深度摄像机获得的原始数据是嘈杂的并且不均匀的,因此,一组预处理方法包括与体积像素电网滤波器,基于统计的异常移除,最不基于方形的内插的采样,以增强和增强巩固数据。执行比例不变特征变换(SIFT)特征和迭代壁点(ICP)的组合以估计机器人的姿势以进行帧对齐。在两个帧的彩色图像上计算的匹配的SIFT特征对来计算刚性变换矩阵,该矩阵被认为是ICP算法的初始变换矩阵估计。通过对齐多个帧来构建致密的地图,并且使用贪婪三角测量方法通过表面重建实现了紧凑的表面模型。实验结果表明,该方法易于申请室内场景重建,可以在几乎实时执行。

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