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Gauge freedoms and uncertainty modeling for three-dimensional computer vision.

机译:三维计算机视觉的量规自由度和不确定性建模。

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Parameter indeterminacies are inherent in 3D computer vision. We show in this thesis that how they are treated can have significant impact on the accuracy of the estimated 3D structure. However, there has not been a general and convenient method available for representing and analyzing the indeterminacies and their effects on accuracy. Consequently, up to the present their effects are usually ignored in uncertainty modeling research.; In this work we a develop gauge-based uncertainty representation for 3D estimation that includes indeterminacies. We represent indeterminacies with orbits in the parameter space and model local linearized parameter indeterminacies as gauge freedoms. Combining this formalism with first order perturbation theory, we are able to model uncertainties along with parameter indeterminacies.; The key to our work is a geometric interpretation of the parameters and gauge freedoms. We solve the problem of how to compare parameter uncertainties despite indeterminacies and added constraints. This permits us to extend the Cramer-Rao lower bound to problems that include parameter indeterminacies.; In 3D computer vision the basic quantities that often cannot be recovered include scale, rotation and translation. We use our method to analyze the local effects of these indeterminacies on the estimated shape, and find all the local gauge freedoms. This enables us to express the uncertainties when additional information is available from measurements that constrain the gauge freedoms.; Through analytical and empirical means we gain intuition into the effects of constraining the gauge freedoms, for both general Structure from Motion and stereo shape estimation. We include, in our uncertainty model, measurement errors and feature localization errors. These results along with our theory allow us to find optimal constraints on the gauge freedoms that maximize the accuracy of the part of the object we seek to estimate.
机译:参数不确定性是3D计算机视觉中固有的。我们在本论文中表明,如何对待它们可能会对估计的3D结构的准确性产生重大影响。但是,还没有一种通用,方便的方法来表示和分析不确定性及其对准确性的影响。因此,到目前为止,不确定性建模研究通常忽略了它们的影响。在这项工作中,我们为3D估计开发了基于量规的不确定性表示形式,其中包括不确定性。我们用参数空间中的轨道表示不确定性,并将局部线性化参数不确定性建模为量规自由度。将这种形式主义与一阶扰动理论相结合,我们能够对不确定性以及参数不确定性进行建模。我们工作的关键是参数和量规自由度的几何解释。我们解决了不确定性和附加约束条件下如何比较参数不确定性的问题。这使我们可以将Cramer-Rao的下限扩展到包括参数不确定性在内的问题。在3D计算机视觉中,通常无法恢复的基本量包括缩放,旋转和平移。我们使用我们的方法来分析这些不确定性对估计形状的局部影响,并找到所有局部尺度的自由度。当可以从测量中获得更多信息以限制量规自由度时,这使我们能够表达不确定性。通过分析和经验方法,我们可以直观地了解限制运动规范的效果,包括运动和立体形状估计的一般结构。在不确定性模型中,我们包括测量误差和特征定位误差。这些结果与我们的理论一起使我们能够找到对规范自由度的最佳约束,从而使我们要估算的物体部分的准确性最大化。

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