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Singular Vector Methods for Fundamental Matrix Computation

机译:基本矩阵计算的奇异矢量方法

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The normalized eight-point algorithm is broadly used for the computation of the fundamental matrix between two images given a set of correspondences. However, it performs poorly for low-size datasets due to the way in which the rank-two constraint is imposed on the fundamental matrix. We propose two new algorithms to enforce the rank-two constraint on the fundamental matrix in closed form. The first one restricts the projection on the manifold of fundamental matrices along the most favorable direction with respect to algebraic error. Its complexity is akin to the classical seven point algorithm. The second algorithm relaxes the search to the best plane with respect to the algebraic error. The minimization of this error amounts to finding the intersection of two bivariate cubic polynomial curves. These methods are based on the minimization of the algebraic error and perform equally well for large datasets. However, we show through synthetic and real experiments that the proposed algorithms compare favorably with the normalized eight-point algorithm for low-size datasets.
机译:归一化的八点算法广泛用于给定一组对应关系的两个图像之间的基本矩阵的计算。然而,由于在基本矩阵上施加了秩二约束的方式,它对于低尺寸数据集来表现不佳。我们提出了两个新的算法,以在封闭形式中强制执行基本矩阵上的等级约束。第一个限制沿着代数误差最有利的方向上的基本矩阵的歧管的歧管的投影。其复杂性类似于经典七点算法。第二算法在相对于代数误差放宽对最佳平面的搜索。最小化该误差的量,以找到两个双变量立方多项式曲线的交叉点。这些方法基于代数误差的最小化,并且对于大型数据集来说同样良好。然而,我们通过合成和真实实验展示了所提出的算法对低尺寸数据集的归一化八点算法比较的算法比较。

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