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Multi-projective Parameter Estimation for Sets of Homogeneous Matrices

机译:均匀矩阵集的多投影参数估计

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A number of problems in computer vision require the estimation of a set of matrices, each of which is defined only up to an individual scale factor and represents the parameters of a separate model, under the assumption that the models are intrinsically interconnected. One example of such a set is a family of fundamental matrices sharing an infinite homography. Here an approach is presented to estimating a general set of interdependent matrices defined to within separate scales. The input data is assumed to consist of individually estimated matrices for particular models, which when considered collectively may fail to satisfy the constraints representing the inter-model relationships. Two cost functions are proposed for upgrading, via optimisation, the data of this sort to a collection of matrices satisfying the inter-model constraints. One of these functions incorporates error covariances. Each function is invariant to any change of scale for the input estimates. The proposed approach is applied to the particular problem of estimating a set of fundamental matrices of the form of the example set above. Experimental results are given which demonstrate the effectiveness of the approach.
机译:计算机视觉中的许多问题需要估计一组矩阵,每个矩阵仅被定义为单独的比例因子,并且表示模型本质上互连的假设下单独模型的参数。这种集合的一个示例是共享无限惯客的基本矩阵的家族。这里提出了一种方法,以估计定义为单独的尺度内的一组一般的相互依存矩阵。假设输入数据包括针对特定模型的单独估计的矩阵组成,当考虑统称时可能无法满足代表模型间关系的约束。提出了两个成本函数,通过优化来升级这种排序的数据,以满足满足模型间约束的矩阵集合。其中一个职能包含错误考罗德。每个函数都是不变的输入估计的任何比例更改。所提出的方法适用于估计上面示例集的形式的一组基本矩阵的特定问题。给出了实验结果,证明了这种方法的有效性。

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