HDR- tof:通过模采集的HDR飞行时间成像

Gal Shtendel, A. Bhandari
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引用次数: 2

摘要

飞行时间(ToF)成像仪,如微软Kinect,是一种主动设备,为三维成像问题提供了便携、高效和消费级的解决方案。顾名思义,在ToF成像中,来自主动照明源(通常是正弦波)的背散射光被用来测量ToF,从而产生深度信息。尽管ToF传感器在自主导航和科学成像等领域应用广泛,但目前ToF传感器的动态范围有限。实现高动态范围(HDR) ToF成像的计算成像解决方案在很大程度上尚未开发。我们在这个方向上迈出了一步,提出了一种新的HDR ToF成像架构;我们将ToF成像与最近推出的无限传感框架相结合。通过在每个ToF像素处考虑模采样,HDR信号被折叠回常规动态范围内。我们的工作为HDR ToF成像提供了一个单镜头解决方案。我们报告了一个保证模非线性反转的采样密度准则。此外,我们还提出了一种新的ToF恢复算法,该算法避免了对模样本展开的需要。基于斯坦福大学3D扫描库的数值示例突出了我们方法的优点,从而为新型成像架构铺平了道路。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
HDR-TOF: HDR Time-of-Flight Imaging via Modulo Acquisition
Time-of-Flight (ToF) imagers, e.g. Microsoft Kinect, are active devices that offer a portable, efficient and a consumer-grade solution to three dimensional imaging problems. As the name suggests, in ToF imaging, back scattered light from an active illumination source (typically a sinusoid) is used to measure the ToF, thus resulting in depth information. Despite its prevalence in applications such as autonomous navigation and scientific imaging, current ToF sensors are limited in their dynamic range. Computational imaging solutions enabling high dynamic range (HDR) ToF imaging are largely unexplored. We take a step in this direction by proposing a novel architecture for HDR ToF imaging; we combine ToF imaging with the recently introduced Unlimited Sensing Framework. By considering modulo sampling at each ToF pixel, HDR signals are folded back in the conventional dynamic range. Our work offers a single-shot solution for HDR ToF imaging. We report a sampling density criterion that guarantees inversion of modulo non-linearity. Furthermore, we also present a new algorithm for ToF recovery that circumvents the need for unfolding of modulo samples. Numerical examples based on the Stanford 3D Scanning Repository highlight the merits of our approach, thus paving a path for a novel imaging architecture.
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