IMAGINE/CSTB, Ecole des Ponts ParisTech, Université Paris-Est, 19, rue Alfred Nobel-Cité Descartes, Champs-sur-Marne, 77455 Marne-la-Vallée Cedex 2, France.
IEEE Trans Pattern Anal Mach Intell. 2012 May;34(5):889-901. doi: 10.1109/TPAMI.2011.172.
Since the initial comparison of Seitz et al., the accuracy of dense multiview stereovision methods has been increasing steadily. A number of limitations, however, make most of these methods not suitable to outdoor scenes taken under uncontrolled imaging conditions. The present work consists of a complete dense multiview stereo pipeline which circumvents these limitations, being able to handle large-scale scenes without sacrificing accuracy. Highly detailed reconstructions are produced within very reasonable time thanks to two key stages in our pipeline: a minimum s-t cut optimization over an adaptive domain that robustly and efficiently filters a quasidense point cloud from outliers and reconstructs an initial surface by integrating visibility constraints, followed by a mesh-based variational refinement that captures small details, smartly handling photo-consistency, regularization, and adaptive resolution. The pipeline has been tested over a wide range of scenes: from classic compact objects taken in a laboratory setting, to outdoor architectural scenes, landscapes, and cultural heritage sites. The accuracy of its reconstructions has also been measured on the dense multiview benchmark proposed by Strecha et al., showing the results to compare more than favorably with the current state-of-the-art methods.
自 Seitz 等人的最初比较以来,密集多视图立体视觉方法的准确性一直在稳步提高。然而,许多限制使得大多数这些方法不适合在不受控制的成像条件下拍摄的户外场景。本工作包括一个完整的密集多视图立体视觉管道,该管道规避了这些限制,能够在不牺牲准确性的情况下处理大规模场景。由于我们的管道中的两个关键阶段,高度详细的重建可以在非常合理的时间内生成:在自适应域上进行最小 s-t 切割优化,该自适应域能够稳健高效地从离群点中过滤出准密集点云,并通过集成可见性约束来重建初始表面,然后是基于网格的变分细化,该细化可以捕获小细节,巧妙地处理照片一致性、正则化和自适应分辨率。该管道已经在广泛的场景中进行了测试:从在实验室环境中拍摄的经典紧凑物体到户外建筑场景、景观和文化遗产场所。其重建的准确性也已经在 Strecha 等人提出的密集多视图基准上进行了测量,结果表明与当前最先进的方法相比具有明显优势。