使用通用流形嵌入的点云检测和配准的语义标记:统计分析

J. Francos
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引用次数: 0

摘要

点云观测值的检测与配准是三维视觉中的基本问题。通用流形嵌入(UME)是一种将观测值映射到矩阵表示的框架,该矩阵表示与刚体坐标变换协变,而其列空间对刚体坐标变换不变。由于点云是没有强加于其上的函数关系的坐标集,因此为点云配准调整UME框架需要定义一个函数,该函数为每个点分配一个值,该值对转换组的动作是不变的。点云语义标注的深度学习方法使得将语义标注信息整合到点云检测和配准中变得更加容易。当语义标记作为点云上定义的变换不变函数时,我们推导了用于评估和优化存在标记错误的点云检测和配准任务中的UME性能的分析工具。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Semantic Labeling for Point Cloud Detection and Registration Using the Universal Manifold Embedding: Statistical Analysis
Detection and registration of point cloud observations are elementary problems in 3-D vision. The Universal Manifold Embedding (UME) is a framework for mapping an observation to a matrix representation which is covariant with the rigid coordinate transformation, while its column space is invariant to the transformation. As point clouds are sets of coordinates with no functional relation imposed on them, adapting the UME framework for point cloud registration requires the definition of a function that assigns a value to each point, invariant to the action of the transformation group. Deep learning methods for point cloud semantic labeling have made it easier to incorporate semantic labels information into point cloud detection and registration. We derive analytic tools for evaluating and optimizing the UME performance in point cloud detection and registration tasks in the presence of labeling errors, when semantic labeling is employed as the transformation-invariant function defined on the point cloud.
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