Keypoint detection serves as the basis for many computer vision and robotics applications. Despite the fact that colored point clouds can be readily obtained, most existing keypoint detectors extract only geometry-salient keypoints, which can impede the overall performance of systems that intend to (or have the potential to) leverage color information. To promote advances in such systems, we propose an efficient multi-modal keypoint detector that can extract both geometry-salient and color-salient keypoints in colored point clouds. The proposed CEntroid Distance (CED) keypoint detector comprises an intuitive and effective saliency measure, the centroid distance, that can be used in both 3D space and color space, and a multi-modal non-maximum suppression algorithm that can select keypoints with high saliency in two or more modalities. The proposed saliency measure leverages directly the distribution of points in a local neighborhood and does not require normal estimation or eigenvalue decomposition. We evaluate the proposed method in terms of repeatability and computational efficiency (i.e. running time) against state-of-the-art keypoint detectors on both synthetic and real-world datasets. Results demonstrate that our proposed CED keypoint detector requires minimal computational time while attaining high repeatability. To showcase one of the potential applications of the proposed method, we further investigate the task of colored point cloud registration. Results suggest that our proposed CED detector outperforms state-of-the-art handcrafted and learning-based keypoint detectors in the evaluated scenes. The C++ implementation of the proposed method is made publicly available at https://github.com/UCR-Robotics/CED_Detector.
翻译:关键点检测是许多计算机视觉和机器人应用的基础。 尽管可以很容易地获得彩色点云, 但大多数现有关键点检测器只能提取几何性能度关键点, 这可能会妨碍打算(或有可能)利用彩色信息的系统的总体性能。 为了促进这些系统的进步, 我们提议了一个高效的多模式关键点检测器, 可以提取色点云中的几何性能和色度关键点。 拟议的CEntroid距离(CED)关键点检测器包括一个直观和有效的突出度测量,即中位点距离,可以在 3D 空间和彩色空间中使用,并会妨碍打算(或有可能)利用彩色信息来利用彩色信息。 拟议的突出度测量器直接利用本地区域各点的分布, 不需要正常的估测或精度变异性变。 我们拟议采用的基于重复性和计算效率的方法(i. 运行时间), 可用于3D空间和彩色空间, 多模式的非最大抑制算法, 将我们的拟议Crentral 系统 的运行中, 预估测算法 。