Image registration with global and local luminance alignment

Jiaya Jia, Chi-Keung Tang
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引用次数: 45

Abstract

Inspired by tensor voting, we present luminance voting, a novel approach for image registration with global and local luminance alignment. The key to our modeless approach is the direct estimation of replacement function, by reducing the complex estimation problem to the robust 2D tensor voting in the corresponding voting spaces. No model for replacement function is assumed. Luminance data are first encoded into 2D ball tensors. Subject to the monotonic constraint only, we vote for an optimal replacement function by propagating the smoothness constraint using a dense tensor field. Our method effectively infers missing curve segments and rejects image outliers without assuming any simplifying or complex curve model. The voted replacement functions are used in our iterative registration algorithm for computing the best warping matrix. Unlike previous approaches, our robust method corrects exposure disparity even if the two overlapping images are initially misaligned. Luminance voting is effective in correcting exposure difference, eliminating vignettes, and thus improving image registration. We present results on a variety of images.
图像配准与全局和局部亮度对齐
受张量投票的启发,我们提出了亮度投票,一种具有全局和局部亮度对齐的图像配准新方法。我们的非模态方法的关键是替换函数的直接估计,通过将复杂的估计问题简化为相应投票空间中的鲁棒二维张量投票。没有假设替换函数的模型。亮度数据首先被编码成二维球张量。仅在单调约束下,我们通过使用密集张量场传播平滑约束来投票选出最优替换函数。我们的方法在不假设任何简化或复杂曲线模型的情况下有效地推断出缺失的曲线段并拒绝图像异常值。在我们的迭代配准算法中使用投票的替换函数来计算最佳的翘曲矩阵。与以前的方法不同,我们的鲁棒方法可以校正曝光差,即使两个重叠图像最初是不对齐的。亮度投票可以有效地校正曝光差,消除小晕,从而改善图像配准。我们展示了各种图像的结果。
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