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Linear fitting with missing data: applications to structure-from-motion and to characterizing intensity images

机译:缺少数据的线性拟合:应用于运动结构和强度图像表征

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Several vision problems can be reduced to the problem of fitting a linear surface of low dimension to data, including the problems of structure-from-affine-motion, and of characterizing the intensity images of a Lambertian scene by constructing the intensity manifold. For these problems, one must deal with a data matrix with some missing elements. In structure-from-motion, missing elements will occur if some point features are not visible in some frames. To construct the intensity manifold missing matrix elements will arise when the surface normals of some scene points do not face the light source in some images. We propose a novel method for fitting a low rank matrix to a matrix with missing elements. We show experimentally that our method produces good results in the presence of noise. These results can be either used directly, or can serve as an excellent starting point for an iterative method.
机译:可以将几个视觉问题简化为将低维线性曲面拟合到数据的问题,包括仿射运动的结构问题以及通过构造强度流形来表征Lambertian场景的强度图像的问题。对于这些问题,必须处理具有某些缺失元素的数据矩阵。在运动结构中,如果某些点特征在某些帧中不可见,则会丢失元素。为了构造强度流形,当某些场景点的表面法线不面对某些图像中的光源时,将丢失矩阵元素。我们提出了一种将低秩矩阵拟合到元素缺失的矩阵的新颖方法。我们通过实验证明,在存在噪声的情况下,我们的方法可以产生良好的结果。这些结果既可以直接使用,也可以作为迭代方法的理想起点。

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