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Heteroscedastic regression in computer vision: Problems with bilinear constraint

机译:计算机视觉中的异方差回归:双线性约束的问题

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We present an algorithm to estimate the parameters of a linear model in the presence of heteroscedastic noise, i.e., each data point having a different covariance matrix. The algorithm is motivated by the recovery of bilinear forms, one of the fundamental problems in computer vision which appears whenever the epipolar constraint is imposed, or a conic is fit to noisy data points. We employ the errors-in-variables (EIV) model and show why already at moderate noise levels most available methods fail to provide a satisfactory solution. The improved behavior of the new algorithm is due to two factors: taking into account the heteroscedastic nature of the errors arising from the linearization of the bilinear form, and the use of generalized singular value decomposition (GSVD) in the computations. The performance of the algorithm is compared with several methods proposed in the literature for ellipse fitting and estimation of the fundamental matrix. It is shown that the algorithm achieves the accuracy of nonlinear optimization techniques at much less computational cost. [References: 31]
机译:我们提出了一种算法,用于在存在异方差噪声的情况下估计线性模型的参数,即每个数据点具有不同的协方差矩阵。该算法是由双线性形式的恢复推动的,双线性形式是计算机视觉中的基本问题之一,每当施加对极约束或圆锥曲线适合嘈杂的数据点时就会出现。我们采用了变量误差(EIV)模型,并说明了为什么在中等噪声水平下大多数可用方法都无法提供令人满意的解决方案。新算法的改进行为归因于两个因素:考虑到双线性形式的线性化引起的误差的异方差性质,以及在计算中使用广义奇异值分解(GSVD)。将算法的性能与文献中提出的几种用于椭圆拟合和基本矩阵估计的方法进行了比较。结果表明,该算法以较少的计算量实现了非线性优化技术的精度。 [参考:31]

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