Globally Optimal Estimation of Nonrigid Image Distortion

作者:Yuandong Tian, Srinivasa G. Narasimhan

摘要

Image alignment in the presence of non-rigid distortions is a challenging task. Typically, this involves estimating the parameters of a dense deformation field that warps a distorted image back to its undistorted template. Generative approaches based on parameter optimization such as Lucas-Kanade can get trapped within local minima. On the other hand, discriminative approaches like nearest-neighbor require a large number of training samples that grows exponentially with respect to the dimension of the parameter space, and polynomially with the desired accuracy 1/ϵ. In this work, we develop a novel data-driven iterative algorithm that combines the best of both generative and discriminative approaches. For this, we introduce the notion of a “pull-back” operation that enables us to predict the parameters of the test image using training samples that are not in its neighborhood (not ϵ-close) in the parameter space. We prove that our algorithm converges to the global optimum using a significantly lower number of training samples that grows only logarithmically with the desired accuracy. We analyze the behavior of our algorithm extensively using synthetic data and demonstrate successful results on experiments with complex deformations due to water and clothing.

论文关键词:Computer vision, Motion and tracking, Image alignment, Image registration, Nonrigid deformation, Feature correspondence, Distortion estimation, Global optimum, Iterative approach, Combine generative and discriminative approaches, Physics-based vision, Water distortion

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论文官网地址:https://doi.org/10.1007/s11263-011-0509-0