高光子效率的计算三维和反射率成像

Dongeek Shin, Ahmed Kirmani, Vivek K Goyal, J. Shapiro
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引用次数: 33

摘要

从场景的主动照明中捕获低光照水平下的深度和反射率图像具有广泛的应用。传统上,即使使用单光子探测器,也需要在每个像素处进行数百个光子探测以减轻泊松噪声。我们介绍了一种鲁棒的方法来估计深度和反射率,使用在场景上平均每像素1个检测光子的顺序。我们的计算成像仪结合了物理上精确的单光子计数统计数据,利用了现实世界反射率和3D结构中的空间相关性。在强背景光下进行的实验表明,我们的计算成像仪能够准确地恢复场景深度和反射率,而传统的基于最大似然的成像方法会导致高度噪声的估计。我们的框架将光子效率提高到传统处理的100倍,因此将有助于快速,低功耗和耐噪声的主动光学成像。
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Computational 3D and reflectivity imaging with high photon efficiency
Capturing depth and reflectivity images at low light levels from active illumination of a scene has wide-ranging applications. Conventionally, even with single-photon detectors, hundreds of photon detections are needed at each pixel to mitigate Poisson noise. We introduce a robust method for estimating depth and reflectivity using on the order of 1 detected photon per pixel averaged over the scene. Our computational imager combines physically accurate single-photon counting statistics with exploitation of the spatial correlations present in real-world reflectivity and 3D structure. Experiments conducted in the presence of strong background light demonstrate that our computational imager is able to accurately recover scene depth and reflectivity, while traditional maximum likelihood-based imaging methods lead to estimates that are highly noisy. Our framework increases photon efficiency 100-fold over traditional processing and thus will be useful for rapid, low-power, and noise-tolerant active optical imaging.
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