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Keypoint Detection in RGBD Images Based on an Anisotropic Scale Space

机译:基于各向异性尺度空间的RGBD图像关键点检测

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摘要

The increasing availability of texture+depth (RGBD) content has recently motivated research toward the design of image features able to employ the additional geometrical information provided by depth. Indeed, such features are supposed to provide higher robustness than conventional 2D features in the presence of large changes of camera viewpoint. In this paper, we consider the first stage of RGBD image matching, i.e., keypoint detection. In order to obtain viewpoint-covariant keypoints, we design a filtering process, which approximates a diffusion process along the surfaces of the scene, by means of the information provided by depth. Next, we employ this multiscale representation to find keypoints through a multiscale keypoint detector. The keypoints obtained by the proposed detector provide substantially higher stability to viewpoint changes than alternative 2D and RGBD feature extraction approaches, both in terms of repeatability and image classification accuracy. Furthermore, the proposed detector can be efficiently implemented on a GPU.
机译:最近,越来越多的纹理+深度(RGBD)内容可供使用,这促使人们对图像特征设计进行了研究,从而能够采用深度提供的其他几何信息。实际上,在照相机视点发生较大变化的情况下,此类功能应该比常规2D功能提供更高的鲁棒性。在本文中,我们考虑了RGBD图像匹配的第一阶段,即关键点检测。为了获得视点协变关键点,我们设计了一个过滤过程,该过程借助深度提供的信息来近似沿场景表面的扩散过程。接下来,我们采用这种多尺度表示法通过多尺度关键点检测器找到关键点。在可重复性和图像分类精度方面,与替代性的2D和RGBD特征提取方法相比,所提出的探测器所获得的关键点为视点变化提供了更高的稳定性。此外,可以在GPU上有效地实现所提出的检测器。

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