Direct Elastic Unrollings of Painted Pottery Surfaces from Sparse Image Sets

Peter Houska, S. Lengauer, S. Karl, R. Preiner
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Abstract

An important task in archaeological research is the comparison of painted motifs on ancient vessels and the analysis of their painting style. Ideally, the pottery objects are available as scanned 3D models, from which the painted surface can be unrolled and potential distortions minimized, so that the vase painting and its individual motifs can be directly inspected. Unfortunately, the percentage of digitally captured vessels is small compared to the large body of cataloged photographs. In this paper, we present a method that creates distortion-minimized unrollings of painted pottery surfaces directly from a small set of photographs. We achieve this by exploiting prior knowledge about the data, namely that most objects exhibit rotational symmetry and that strict guidelines were followed when capturing photographs of the ancient vases. Based on the distinctly visible object silhouettes in the photographs we are able to extract proxy geometries of the objects which we encode as per-view geometric maps. By stitching the single-view data, we obtain a combined map capturing the geometry and texture of the entire painted surface. This enables us to minimize typical projective distortions by elastic relaxation. Our pipeline works entirely in 2D image space, circumventing time-consuming 3D scans and surface reconstructions of (often inaccessible) vessels. Using a combination of CPU-based image processing and GPU-based relaxation, results are produced in only a few minutes.
稀疏图像集中彩陶表面的直接弹性展开
考古研究的一项重要任务是对古代器物的绘画图案进行比较,分析其绘画风格。理想情况下,这些陶器可以作为扫描的3D模型,从中可以展开绘制的表面,最大限度地减少潜在的扭曲,这样就可以直接检查花瓶绘画及其单个图案。不幸的是,与大量编目照片相比,数字化捕获的船只所占的比例很小。在本文中,我们提出了一种方法,可以直接从一小组照片中创建扭曲最小化的彩陶表面展开。我们通过利用有关数据的先验知识来实现这一点,即大多数物体表现出旋转对称性,并且在捕捉古代花瓶的照片时遵循严格的指导方针。基于照片中清晰可见的物体轮廓,我们能够提取物体的代理几何形状,并将其编码为逐视图几何地图。通过拼接单视图数据,我们获得了捕获整个绘制表面的几何和纹理的组合地图。这使我们能够通过弹性松弛最小化典型的投影畸变。我们的管道完全在2D图像空间中工作,避免了耗时的3D扫描和(通常无法进入的)血管表面重建。结合使用基于cpu的图像处理和基于gpu的松弛,结果仅在几分钟内产生。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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