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RECONSTRUCTION OF INDOOR MODELS USING POINT CLOUDS GENERATED FROM SINGLE-LENS REFLEX CAMERAS AND DEPTH IMAGES

机译:使用单镜头反射摄像机和深度图像产生的点云重建室内模型

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This paper presents a data acquisition system consisting of multiple RGB-D sensors and digital single-lens reflex (DSLR) cameras. A systematic data processing procedure for integrating these two kinds of devices to generate three-dimensional point clouds of indoor environments is also developed and described. In the developed system, DSLR cameras are used to bridge the Kinects and provide a more accurate ray intersection condition, which takes advantage of the higher resolution and image quality of the DSLR cameras. Structure from Motion (SFM) reconstruction is used to link and merge multiple Kinect point clouds and dense point clouds (from DSLR color images) to generate initial integrated point clouds. Then, bundle adjustment is used to resolve the exterior orientation (EO) of all images. Those exterior orientations are used as the initial values to combine these point clouds at each frame into the same coordinate system using Helmert (seven-parameter) transformation. Experimental results demonstrate that the design of the data acquisition system and the data processing procedure can generate dense and fully colored point clouds of indoor environments successfully even in featureless areas. The accuracy of the generated point clouds were evaluated by comparing the widths and heights of identified objects as well as coordinates of pre-set independent check points against in situ measurements. Based on the generated point clouds, complete and accurate three-dimensional models of indoor environments can be constructed effectively.
机译:本文介绍了由多个RGB-D传感器和数字单镜头反射(DSLR)相机组成的数据采集系统。还开发并描述了用于集成这两种设备以产生三维环境的三维点云的系统数据处理过程。在开发系统中,DSLR摄像机用于桥接Kinects并提供更精确的光线交叉条件,这利用了DSLR相机的更高分辨率和图像质量。来自运动(SFM)重建的结构用于链接和合并多个Kinect点云和密集点云(从DSLR彩色图像)来生成初始集成点云。然后,使用捆绑调整来解决所有图像的外部方向(EO)。这些外向定向用作使用Helmert(七参数)转换的每个帧将这些点云组合到同一坐标系中的初始值。实验结果表明,即使在以无特征区域中,数据采集系统和数据处理过程的设计也可以成功地产生致密和完全彩色点云的室内环境。通过比较所识别的对象的宽度和高度以及针对原位测量的预先设定的独立检查点的坐标来评估所产生的点云的准确性。基于所产生的点云,可以有效地构建完整和准确的室内环境的三维模型。

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