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A Probabilistic Framework for Color-Based Point Set Registration

机译:基于颜色的点集注册的概率框架

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In recent years, sensors capable of measuring both color and depth information have become increasingly popular. Despite the abundance of colored point set data, stateof-the-art probabilistic registration techniques ignore the available color information. In this paper, we propose a probabilistic point set registration framework that exploits available color information associated with the points. Our method is based on a model of the joint distribution of 3D-point observations and their color information. The proposed model captures discriminative color information, while being computationally efficient. We derive an EM algorithm for jointly estimating the model parameters and the relative transformations. Comprehensive experiments are performed on the Stanford Lounge dataset, captured by an RGB-D camera, and two point sets captured by a Lidar sensor. Our results demonstrate a significant gain in robustness and accuracy when incorporating color information. On the Stanford Lounge dataset, our approach achieves a relative reduction of the failure rate by 78% compared to the baseline. Furthermore, our proposed model outperforms standard strategies for combining color and 3D-point information, leading to state-of-the-art results.
机译:近年来,能够同时测量颜色和深度信息的传感器已变得越来越流行。尽管有大量的彩色点集数据,但是最新的概率配准技术忽略了可用的颜色信息。在本文中,我们提出了一种概率点集注册框架,该框架利用与点关联的可用颜色信息。我们的方法基于3D点观测值及其颜色信息的联合分布模型。所提出的模型可捕获判别性颜色信息,同时计算效率高。我们推导了一种用于联合估计模型参数和相对转换的EM算法。对Stanford Lounge数据集进行了综合实验,该数据集由RGB-D相机捕获,而两个点集由激光雷达传感器捕获。我们的结果表明,在合并颜色信息时,鲁棒性和准确性得到了显着提高。在Stanford Lounge数据集上,我们的方法与基准相比将故障率相对降低了78%。此外,我们提出的模型优于结合颜色和3D点信息的标准策略,从而可以提供最新的结果。

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