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Computer Vision Meets Geometric Modeling: Multi-view Reconstruction of Surface Points and Normals Using Affine Correspondences

机译:计算机视觉满足几何建模:使用仿射对应对曲面点和法线进行多视图重建

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A novel surface normal estimator is introduced using affine-invariant features extracted and tracked across multiple views. Normal estimation is robustified and integrated into our reconstruction pipeline that has increased accuracy compared to the State-of-the-Art. Parameters of the views and the obtained spatial model, including surface normals, are refined by a novel bundle adjustment-like numerical optimization. The process is an alternation with a novel robust view-dependent consistency check for surface normals, removing normals inconsistent with the multiple-view track. Our algorithms are quantitatively validated on the reverse engineering of geometrical elements such as planes, spheres, or cylinders. It is shown here that the accuracy of the estimated surface properties is appropriate for object detection. The pipeline is also tested on the reconstruction of man-made and free-form objects.
机译:使用多种视图提取和跟踪的仿射不变特征引入了一种新的表面正常估计器。正常估计是强制性的,并集成到我们的重建管道中,与最先进的相比具有提高的准确性。通过新颖的捆绑调节式数值优化来改进视图和所获得的空间模型(包括曲面法)的参数。该过程是具有新颖的鲁棒视图相关的一致性检查表面法线的交替,从而消除与多视图轨道不一致的正常。我们的算法在诸如平面,球形或汽缸的几何元素的逆向工程上定量验证。这里示出了估计表面特性的准确性适用于对象检测。该管道还测试了对人造和自由形式物体的重建。

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