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Maximum likelihood parameter estimation of textures using a Wold-decomposition based model

机译:使用基于Wold分解的模型的纹理的最大似然参数估计

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We present a solution to the problem of modeling, parameter estimation, and synthesis of natural textures. The texture field is assumed to be a realization of a regular homogeneous random field, which can have a mixed spectral distribution. On the basis of a 2-D Wold-like decomposition, the field is represented as a sum of a purely indeterministic component, a harmonic component, and a countable number of evanescent fields. We present a maximum-likelihood solution to the joint parameter estimation problem of these components from a single observed realization of the texture field. The proposed solution is a two-stage algorithm. In the first stage, we obtain an estimate for the number of harmonic and evanescent components in the field, and a suboptimal initial estimate for the parameters of their spectral supports. In the second stage, we refine these initial estimates by iterative maximization of the likelihood function of the observed data. By introducing appropriate parameter transformations the highly nonlinear least-squares problem that results from the maximization of the likelihood function, is transformed into a separable least-squares problem. The solution for the unknown spectral supports of the harmonic and evanescent components reduces the problem of solving for the transformed parameters of the field to a linear least squares. Solution of the transformation equations then provides a complete solution of the field-model parameter estimation problem. The Wold-based model and the resulting analysis and synthesis algorithms are applicable to a wide variety of texture types found in natural images.
机译:我们提出了对自然纹理建模,参数估计和合成问题的解决方案。假定纹理场是规则均质随机场的实现,该场可以具有混合频谱分布。基于2-D Wold-like分解,该场表示为纯不确定分量,谐波分量和可数的渐逝场之和。我们从纹理场的单个观察到的实现中提出了这些组件的联合参数估计问题的最大似然解。所提出的解决方案是两阶段算法。在第一阶段,我们获得对现场谐波和渐逝分量数量的估计,以及对其频谱支持参数的次佳初始估计。在第二阶段,我们通过迭代最大化观察数据的似然函数来完善这些初始估计。通过引入适当的参数变换,将由似然函数最大化导致的高度非线性最小二乘问题转化为可分离的最小二乘问题。谐波和e逝分量的未知频谱支持的解决方案将解决将场的变换参数求解为线性最小二乘的问题。然后,变换方程的解提供了场模型参数估计问题的完整解。基于Wold的模型以及由此产生的分析和合成算法适用于自然图像中发现的多种纹理类型。

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