Bartoli Adrien
LASMEA, 63177 Aubière cedex, France.
IEEE Trans Pattern Anal Mach Intell. 2008 Dec;30(12):2098-108. doi: 10.1109/TPAMI.2008.22.
Image registration consists in estimating geometric and photometric transformations that align two images as best as possible. The direct approach consists in minimizing the discrepancy in the intensity or color of the pixels. The inverse compositional algorithm has been recently proposed by Baker et al. for the direct estimation of groupwise geometric transformations. It is efficient in that it performs several computationally expensive calculations at a pre-computation phase. Photometric transformations act on the value of the pixels. They account for effects such as lighting change. Jointly estimating geometric and photometric transformations is thus important for many tasks such as image mosaicing. We propose an algorithm to jointly estimate groupwise geometric and photometric transformations while preserving the efficient pre-computation based design of the original inverse compositional algorithm. It is called the dual inverse compositional algorithm. It uses different approximations than the simultaneous inverse compositional algorithm and handles groupwise geometric and global photometric transformations. Its name stems from the fact that it uses an inverse compositional update rule for both the geometric and the photometric transformations. We demonstrate the proposed algorithm and compare it to previous ones on simulated and real data. This shows clear improvements in computational efficiency and in terms of convergence.
图像配准在于估计几何和光度变换,以使两幅图像尽可能最佳地对齐。直接方法在于最小化像素强度或颜色的差异。贝克等人最近提出了逆合成算法,用于直接估计逐组几何变换。它很高效,因为它在预计算阶段执行了几次计算成本高昂的计算。光度变换作用于像素值。它们考虑诸如光照变化等效果。因此,联合估计几何和光度变换对于许多任务(如图像拼接)很重要。我们提出了一种算法,用于联合估计逐组几何和光度变换,同时保留原始逆合成算法基于高效预计算的设计。它被称为对偶逆合成算法。它使用与同时逆合成算法不同的近似方法,并处理逐组几何和全局光度变换。它的名字源于这样一个事实,即它对几何和光度变换都使用逆合成更新规则。我们展示了所提出的算法,并在模拟数据和真实数据上与以前的算法进行比较。这表明在计算效率和收敛方面有明显改进。