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Real-time High-accuracy Three-Dimensional Reconstruction with Consumer RCB-D Cameras

机译:消费类RCB-D摄像机实时高精度三维重建

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摘要

We present an integrated approach for reconstructing high-fidelity three-dimensional (3D) models using consumer RGB-D cameras. RGB-D registration and reconstruction algorithms are prone to errors from scanning noise, making it hard to perform 3D reconstruction accurately. The key idea of our method is to assign a probabilistic uncertainty model to each depth measurement, which then guides the scan alignment and depth fusion. This allows us to effectively handle inherent noise and distortion in depth maps while keeping the overall scan registration procedure under the iterative closest point framework for simplicity and efficiency. We further introduce a local-to-global, submap-based, and uncertainty-aware global pose optimization scheme to improve scalability and guarantee global model consistency. Finally, we have implemented the proposed algorithm on the GPU, achieving real-time 3D scanning frame rates and updating the reconstructed model on-the-fly. Experimental results on simulated and real-world data demonstrate that the proposed method outperforms state-of-the-art systems in terms of the accuracy of both recovered camera trajectories and reconstructed models.
机译:我们提出了一种使用消费类RGB-D相机重建高保真三维(3D)模型的集成方法。 RGB-D配准和重建算法容易因扫描噪声而产生错误,因此很难准确执行3D重建。我们方法的关键思想是为每个深度测量分配一个概率不确定性模型,然后指导扫描对齐和深度融合。这使我们可以有效地处理深度图中的固有噪声和失真,同时将整个扫描配准过程保持在迭代最近点框架下,以简化操作并提高效率。我们进一步介绍了一种局部到全局,基于子图和不确定性的全局姿势优化方案,以提高可伸缩性并保证全局模型的一致性。最后,我们在GPU上实现了所提出的算法,实现了实时3D扫描帧速率并实时更新了重建的模型。在模拟和真实数据上的实验结果表明,该方法在恢复的相机轨迹和重建模型的准确性方面都优于最新的系统。

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