来自天空的形状:天空下的偏振正常恢复

Tomoki Ichikawa, Matthew Purri, Ryo Kawahara, S. Nobuhara, Kristin J. Dana, K. Nishino
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引用次数: 10

摘要

天空通过散射未偏振光的太阳而呈现出独特的空间偏振模式。就像昆虫用这种独特的角度模式导航一样,我们用它来映射像素到天空的方向。也就是说,我们展示了在天空下捕获的物体的偏振外观中编码的独特偏振模式可以被解码以揭示每个像素的表面法线。我们推导了在阳光和晴朗天空照射下的漫反射+镜面的偏振反射模型。该模型用于从一天中不同时间天空下捕获的单幅偏振图像或多幅偏振图像中恢复物体的逐像素表面法线。我们通过实验评估了我们的天空形状方法在许多不同表面组成的真实物体上的准确性。结果清楚地表明,这种被动的精细几何恢复方法充分利用了自然产生的独特照明,是3D传感的可行选择。随着四拜耳极化芯片的出现,我们相信我们的方法的含义跨越了广泛的领域。
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Shape from Sky: Polarimetric Normal Recovery Under The Sky
The sky exhibits a unique spatial polarization pattern by scattering the unpolarized sun light. Just like insects use this unique angular pattern to navigate, we use it to map pixels to directions on the sky. That is, we show that the unique polarization pattern encoded in the polarimetric appearance of an object captured under the sky can be decoded to reveal the surface normal at each pixel. We derive a polarimetric reflection model of a diffuse plus mirror surface lit by the sun and a clear sky. This model is used to recover the per-pixel surface normal of an object from a single polarimetric image or from multiple polarimetric images captured under the sky at different times of the day. We experimentally evaluate the accuracy of our shape-from-sky method on a number of real objects of different surface compositions. The results clearly show that this passive approach to fine-geometry recovery that fully leverages the unique illumination made by nature is a viable option for 3D sensing. With the advent of quad-Bayer polarization chips, we believe the implications of our method span a wide range of domains.
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