首页> 外文期刊>Photogrammetric Engineering & Remote Sensing: Journal of the American Society of Photogrammetry >Enhanced 3D Mapping with an RGB-D Sensor via Integration of Depth Measurements and Image Sequences
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Enhanced 3D Mapping with an RGB-D Sensor via Integration of Depth Measurements and Image Sequences

机译:通过集成深度测量和图像序列,增强了具有RGB-D传感器的3D映射

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摘要

State-of-the-art visual simultaneous localization and mapping (SLAM) techniques greatly facilitate three-dimensional (3D) mapping and modeling with the use of low-cost red-green-blue-depth (rgbd) sensors. However, the effective range of such sensors is limited due to the working range of the infrared (m) camera, which provides depth information, and thus the practicability of such sensors in 3D mapping and modeling is limited. To address this limitation, we present a novel solution for enhanced 3D mapping using a low-cost rgb-d sensor. We carry out state-of-the-art visual SLAM to obtain 3D point clouds within the mapping range of the rgb-d sensor and implement an improved structure-from-motion (SfM) on the collected rgb image sequences with additional constraints from the depth information to produce image-based 3D point clouds. We then develop a feature-based scale-adaptive registration to merge the gained point clouds to further generate enhanced and extended 3D mapping results. We use two challenging test sites to examine the proposed method. At these two sites, the coverage of both generated 3D models increases by more than 50% with the proposed solution. Moreover, the proposed solution achieves a geometric accuracy of about 1% in a measurement range of about 20 m. These positive experimental results not only demonstrate the feasibility and practicality of the proposed solution but also its potential.
机译:最先进的视觉同时定位和映射(SLAM)技术极大地促进了使用低成本的红绿深度(RGBD)传感器的三维(3D)映射和建模。然而,由于红外线(M)相机的工作范围提供的,这种传感器的有效范围是有限的,其提供深度信息,因此在3D映射和建模中的这种传感器的实用性是有限的。为了解决此限制,我们使用低成本RGB-D传感器提高了增强的3D映射的新解决方案。我们执行最先进的视觉SLAM,以获得RGB-D传感器的映射范围内的3D点云,并在收集的RGB图像序列上实现改进的结构 - 从动作(SFM),其中来自额外的约束深度信息以产生基于图像的3D点云。然后,我们开发基于特征的刻度自适应注册,以合并所获得的点云,以进一步生成增强且扩展的3D映射结果。我们使用两个具有挑战性的测试网站来检查所提出的方法。在这两个站点,所产生的3D模型的覆盖率随所提出的解决方案增加了50%以上。此外,所提出的解决方案在约20米的测量范围内实现约1%的几何精度。这些正实验结果不仅证明了所提出的解决方案的可行性和实用性,而且展示其潜力。

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