Visual Words for 3D Reconstruction and Pose Computation

S. K., M. Berger, F. Sur
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引用次数: 10

Abstract

Visual vocabularies are standard tools in the object/image classification literature, and are emerging as a new tool for building point correspondences for pose estimation. This paper proposes several visual word based methods for point matching, with structure from motion and pose estimation applications in view. The three dimensional geometry of a scene is first extracted with bundle adjustment techniques based on the key point correspondences. These correspondences are obtained by grouping the set of all SIFT descriptors from the training images into visual words. We obtain a more accurate 3D geometry than with classical image-to-image point matching. In the second step, these visual words serve as 3D point descriptors robust to viewpoint change, and are then used for building 2D-3D correspondences for a test image, yielding the pose of the camera by solving the PnP problem. We compare several visual word formation techniques w.r.t robustness to viewpoint change between the learning and test images and discuss the required computational time.
用于三维重建和姿态计算的视觉词
视觉词汇表是目标/图像分类文献中的标准工具,并且正在成为构建点对应以进行姿态估计的新工具。本文提出了几种基于视觉词的点匹配方法,并考虑了运动结构和姿态估计的应用。首先利用基于关键点对应的束平差技术提取场景的三维几何形状。这些对应关系是通过将训练图像中的所有SIFT描述符集合分组成视觉词来获得的。与传统的图像对图像点匹配相比,我们获得了更精确的三维几何形状。在第二步中,这些视觉词作为对视点变化具有鲁棒性的3D点描述符,然后用于为测试图像构建2D-3D对应关系,通过解决PnP问题产生相机的姿态。我们比较了几种视觉构词法对学习图像和测试图像视点变化的鲁棒性,并讨论了所需的计算时间。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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