Tsin Yanghai, Kang Sing Bing, Szeliski Richard
Siemens Corporate Research, 755 College Road East, Princeton, NJ 08540, USA.
IEEE Trans Pattern Anal Mach Intell. 2006 Feb;28(2):290-301. doi: 10.1109/TPAMI.2006.42.
In this paper, we address stereo matching in the presence of a class of non-Lambertian effects, where image formation can be modeled as the additive superposition of layers at different depths. The presence of such effects makes it impossible for traditional stereo vision algorithms to recover depths using direct color matching-based methods. We develop several techniques to estimate both depths and colors of the component layers. Depth hypotheses are enumerated in pairs, one from each layer, in a nested plane sweep. For each pair of depth hypotheses, matching is accomplished using spatial-temporal differencing. We then use graph cut optimization to solve for the depths of both layers. This is followed by an iterative color update algorithm which we proved to be convergent. Our algorithm recovers depth and color estimates for both synthetic and real image sequences.
在本文中,我们研究了存在一类非朗伯效应时的立体匹配问题,其中图像形成可建模为不同深度层的相加叠加。此类效应的存在使得传统立体视觉算法无法使用基于直接颜色匹配的方法恢复深度。我们开发了几种技术来估计组成层的深度和颜色。在嵌套平面扫描中,深度假设以成对的方式枚举,每层各一个。对于每对深度假设,使用时空差分来完成匹配。然后我们使用图割优化来求解两层的深度。接下来是一个迭代颜色更新算法,我们证明了它是收敛的。我们的算法恢复了合成图像序列和真实图像序列的深度和颜色估计。