Linear Fitting with Missing Data for Structure-from-Motion
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摘要
Several vision problems can be reduced to the problem of fitting a linear surface of low dimension to data. These include determining affine structure from motion or from intensity images. These methods must deal with missing data; for example, in structure from motion, missing data will occur if some point features are not visible in the image throughout the motion sequence. Once data is missing, linear fitting becomes a nonlinear optimization problem. Techniques such as gradient descent require a good initial estimate of the solution to ensure convergence to the correct answer. We propose a novel method for fitting a low rank matrix to a matrix with missing elements. This method produces a good starting point for descent-type algorithms and can produce an accurate solution without further refinement. We then focus on applying this method to the problem of structure-from-motion. We show that our method has desirable theoretical properties compared to previously proposed methods, because it can find solutions when there is less data present. We also show experimentally that our method provides good results compared to previously proposed methods.
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论文评审过程:Received 8 June 1999, Accepted 18 January 2001, Available online 12 March 2002.
论文官网地址:https://doi.org/10.1006/cviu.2001.0906