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An efficient rotation and translation decoupled initialization from large field of view depth images

机译:高效的旋转和平移使大视野深度图像的初始化解耦

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Image and point cloud registration methods compute the relative pose between two images. Commonly used registration algorithms are iterative and rely on the assumption that the motion between the images is small. In this work, we propose a fast pose estimation technique to compute a rough estimate of large motions between depth images, which can be used as initialization to dense registration methods. The main idea is to explore the properties given by planar surfaces with co-visibility and their normals from two distinct viewpoints. We present, in two decoupled stages, the rotation and then the translation estimation, both based on the normal vectors orientation and on the depth. These two stages are efficiently computed by using low resolution depth images and without any feature extraction/matching. We also analyze the limitations and observabilty of this approach, and its relationship to ICP point-to-plane. Notably, if the rotation is observable, at least five degrees of freedom can be estimated in the worst case. To demonstrate the effectiveness of the method, we evaluate the initialization technique in a set of challenging scenarios, comprising simulated spherical images from the Sponza Atrium model benchmark and real spherical indoor sequences.
机译:图像和点云配准方法计算两个图像之间的相对姿势。常用的配准算法是迭代的,并且依赖于图像之间的运动很小的假设。在这项工作中,我们提出了一种快速姿态估计技术来计算深度图像之间大运动的粗略估计,可以用作密集配准方法的初始化。主要思想是从两个不同的角度探索具有可共见性的平面所赋予的特性及其法线。我们在两个分离的阶段中,根据法向矢量方向和深度,分别给出旋转和平移估计。通过使用低分辨率深度图像并且无需任何特征提取/匹配即可有效地计算这两个阶段。我们还分析了这种方法的局限性和可观察性,以及它与ICP点对面的关系。值得注意的是,如果可以观察到旋转,则在最坏的情况下至少可以估计五个自由度。为了证明该方法的有效性,我们在一组具有挑战性的场景中评估了初始化技术,包括来自Sponza Atrium模型基准的模拟球形图像和真实的球形室内序列。

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