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Single Day Outdoor Photometric Stereo

机译:单日户外光度立体声

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摘要

Photometric Stereo (PS) under outdoor illumination remains a challenging, ill-posed problem due to insufficient variability in illumination. Months-long capture sessions are typically used in this setup, with little success on shorter, single-day time intervals. In this paper, we investigate the solution of outdoor PS over a single day, under different weather conditions. First, we investigate the relationship between weather and surface reconstructability in order to understand when natural lighting allows existing PS algorithms to work. Our analysis reveals that partially cloudy days improve the conditioning of the outdoor PS problem while sunny days do not allow the unambiguous recovery of surface normals from photometric cues alone. We demonstrate that calibrated PS algorithms can thus be employed to reconstruct Lambertian surfaces accurately under partially cloudy days. Second, we solve the ambiguity arising in clear days by combining photometric cues with prior knowledge on material properties, local surface geometry and the natural variations in outdoor lighting through a CNN-based, weakly-calibrated PS technique. Given a sequence of outdoor images captured during a single sunny day, our method robustly estimates the scene surface normals with unprecedented quality for the considered scenario. Our approach does not require precise geolocation and significantly outperforms several state-of-the-art methods on images with real lighting, showing that our CNN can combine efficiently learned priors and photometric cues available during a single sunny day.
机译:下户外照明光度立体(PS)仍然是一个具有挑战性的,病态问题由于变异照明不足。长达数月的拍摄会话中通常使用此设置,对短,单日的时间间隔收效甚微。在本文中,我们研究了室外PS过一天的解决方案,不同天气条件下。首先,我们调查,以了解当自然采光允许现有PS算法来工作的天气和表面reconstructability之间的关系。我们的分析表明,部分阴天提高室外PS问题的调节而阳光明媚的日子不允许表面法线的单独从光度线索明确的复苏。我们表明,校准算法PS因此,可以用来重建准确下部分阴天朗伯表面。其次,我们解决由光度线索对材料特性的先验知识,局部表面的几何形状和通过基于CNN-,弱校准PS技术在户外照明的自然变化结合在晴天引起的二义性。鉴于在一个阳光灿烂的日子户外拍摄的图像序列,我们的方法稳健估计与所考虑的场景前所未有质量现场表面法线。我们的方法不需要精确的地理定位和显著优于国家的最先进的几个与真正的照明图像的方法,这表明我们的CNN可以在一个单一的阳光灿烂的日子可结合有效地学习先验和光度线索。

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