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Albedo estimation for real-time 3D reconstruction using RGB-D and IR data

机译:使用RGB-D和IR数据的实时3D重建的Albedo估计

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摘要

Reconstructing scenes in real-time using low-cost sensors has gained increasing attention in recent research and enabled numerous applications in graphics, vision, and robotics. While current techniques offer a substantial improvement regarding the quality of the reconstructed geometry, the degree of realism of the overall appearance is still lacking as the reconstruction of accurate surface appearance is highly challenging due to the complex interplay of surface geometry, reflectance properties and surrounding illumination. We present a novel approach that allows the reconstruction of both the geometry and the spatially varying surface albedo of a scene from RGB-D and IR data obtained via commodity sensors. In comparison to previous approaches, our approach offers an improved robustness and a significant speed-up to even fulfill the real-time requirements. For this purpose, we exploit the benefits of scene segmentation to improve albedo estimation due to the resulting better segment-wise coupling of IR and RGB data that takes into account the wavelength characteristics of different materials within the scene. The estimated albedo is directly integrated into the dense volumetric reconstruction framework using a novel weighting scheme to generate high-quality results. In our evaluation, we demonstrate that our approach allows albedo capturing of complicated scenarios including complex, high-frequent and strongly varying lighting as well as shadows.
机译:使用低成本传感器实时重建场景在最近的研究中获得了越来越关注,并在图形,视觉和机器人中启用了许多应用。虽然当前技术提供了关于重建几何形状的质量的大量改进,但由于表面几何形状,反射特性和周围照明的复杂相互作用,整体外观的现实程度仍然缺乏大量挑战性。 。我们提出了一种新颖的方法,其允许从通过商品传感器获得的RGB-D和IR数据重建几何形状和空间变化的表面Albedo。与以前的方法相比,我们的方法提供了改进的鲁棒性和显着的速度,以实现实时要求。为此目的,我们利用场景分割的好处,以改善Albedo估计,因为由IR和RGB数据的更好的段和RGB数据考虑了场景内不同材料的波长特性。估计的Albedo使用新颖的加权方案直接集成到密集的体积重建框架中以产生高质量的结果。在我们的评估中,我们证明我们的方法允许反复捕获复杂的情景,包括复杂,高频繁和强烈的照明以及阴影。

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