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A framework for automatically recovering object shape, reflectance and light sources from calibrated images

机译:自动从校准图像中恢复对象形状,反射率和光源的框架

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In this paper, we present a complete framework for recovering an object shape, estimating its reflectance properties and light sources from a set of images. The whole process is performed automatically. We use the shape from silhouette approach proposed by R. Szeliski (1993) combined with image pixels for reconstructing a triangular mesh according to the marching Cubes algorithm. A classification process identifies regions of the object having the same appearance. For each region, a single point or directional light source is detected. Therefore, we use specular lobes, lambertian regions of the surface or specular highlights seen on images. An identification method jointly (i) decides what light Sources are actually significant and (ii) estimates diffuse and specular coefficients for a surface represented by the modified Phong model (Lewis, 1994). In order to validate our algorithm efficiency, we present a case study with various objects, light sources and surface properties. As shown in the results, our system proves accurate even for real objects images obtained with an inexpensive acquisition system.
机译:在本文中,我们提供了一个完整的框架来恢复对象的形状,并从一组图像中估计其反射特性和光源。整个过程是自动执行的。我们将R. Szeliski(1993)提出的轮廓法形状与图像像素结合使用,以根据Marching Cubes算法重建三角形网格。分类过程识别对象的具有相同外观的区域。对于每个区域,都会检测到一个点光源或定向光源。因此,我们使用镜面波瓣,表面的朗伯区域或在图像上看到的镜面高光。识别方法共同(i)决定哪些光源实际上是重要的(ii)估计由修改的Phong模型表示的表面的漫反射系数和镜面反射系数(Lewis,1994)。为了验证我们的算法效率,我们提供了一个有关各种对象,光源和表面特性的案例研究。如结果所示,即使对于使用廉价采集系统获得的真实物体图像,我们的系统也证明是准确的。

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