使用RGB-D传感器对室内环境进行高质量的3D重建

Jun Wang, Shoudong Huang, Liang Zhao, J. Ge, S. He, Chengqi Zhang, Xiangyu Wang
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引用次数: 9

摘要

大规模室内场景的高质量三维重建是将同步定位与测绘(SLAM)与建筑检测、施工监控等其他应用相结合的关键。然而,对全局一致性的要求给定位和映射都带来了挑战。特别是,当使用标准SLAM技术处理无特征的墙壁和屋顶区域时,可能会发生重大的定位和映射错误。本文提出了一种新的框架,旨在仅使用RGB-D传感器重建室内环境的高质量,全局一致的3D模型。首先在局部束平差中引入稀疏和密集特征约束。然后,将平面约束纳入到全局束平差中。我们将点云融合到截断的带符号距离函数体中,从中提取出高质量的网格。我们的框架为室内场景提供了全面的3D扫描解决方案,使高质量的结果和潜在的应用在建筑信息系统中。用本文提出的方法重建的三维模型的视频可在https://youtu.be/DWMP4YfeNeY上获得。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
High quality 3D reconstruction of indoor environments using RGB-D sensors
High-quality 3D reconstruction of large-scale indoor scene is the key to combine Simultaneous Localization And Mapping (SLAM) with other applications, such as building inspection and construction monitoring. However, the requirement of global consistency brings challenges to both localization and mapping. In particular, significant localization and mapping error can happen when standard SLAM techniques are used when dealing with the area of featureless walls and roofs. This paper proposed a novel framework aiming to reconstruct a high-quality, globally consistent 3D model for indoor environments using only a RGB-D sensor. We first introduce the sparse and dense feature constraints in the local bundle adjustment. Then, the planar constraints are incorporated in the global bundle adjustment. We fuse the point clouds in a truncated signed distance function volume, from which the high quality mesh can be extracted. Our framework leads to a comprehensive 3D scanning solution for indoor scene, enabling high-quality results and potential applications in building information system. The video of 3D models reconstructed by the method proposed in this paper is available at https://youtu.be/DWMP4YfeNeY.
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