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首页> 外文期刊>ACM Transactions on Graphics >Wave-Based Non-Line-of-Sight Imaging using Fast f−k Migration
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Wave-Based Non-Line-of-Sight Imaging using Fast f−k Migration

机译:使用快速fk迁移的基于波的非视线成像

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摘要

Imaging objects outside a camera's direct line of sight has important applications in robotic vision, remote sensing, and many other domains. Timeof-flight-based non-line-of-sight (NLOS) imaging systems have recently demonstrated impressive results, but several challenges remain. Image formation and inversion models have been slow or limited by the types of hidden surfaces that can be imaged. Moreover, non-planar sampling surfaces and non-confocal scanning methods have not been supported by efficient NLOS algorithms. With this work, we introduce a wave-based image formation model for the problem of NLOS imaging. Inspired by inverse methods used in seismology, we adapt a frequency-domain method, f-k migration, for solving the inverse NLOS problem. Unlike existing NLOS algorithms, f-k migration is both fast and memory efficient, it is robust to specular and other complex reflectance properties, and we show how it can be used with non-confocally scanned measurements as well as for non-planar sampling surfaces. f-k migration is more robust to measurement noise than alternative methods, generally produces better quality reconstructions, and is easy to implement. We experimentally validate our algorithms with a new NLOS imaging system that records room-sized scenes outdoors under indirect sunlight, and scans persons wearing retroreflective clothing at interactive rates.
机译:在摄像机的直接视线之外对物体进行成像在机器人视觉,遥感和许多其他领域中具有重要的应用。基于飞行时间的非视距(NLOS)成像系统最近已展示出令人印象深刻的结果,但仍然存在一些挑战。图像形成和反演模型很慢,或者受可以成像的隐藏表面类型的限制。此外,有效的NLOS算法尚未支持非平面采样表面和非共面扫描方法。通过这项工作,我们为NLOS成像问题引入了基于波浪的图像形成模型。受地震学中使用的逆方法的启发,我们采用频域方法f-k偏移来解决NLOS逆问题。与现有的NLOS算法不同,f-k迁移既快速又具有存储效率,它对镜面反射和其他复杂的反射特性具有鲁棒性,并且我们展示了如何将其用于非共聚焦扫描测量以及非平面采样表面。与替代方法相比,f-k迁移对测量噪声更健壮,通常可产生更好的质量重建,并且易于实现。我们使用新的NLOS成像系统实验性地验证了我们的算法,该系统可以记录室外在间接阳光下的房间大小的场景,并以交互速率扫描穿着反光衣服的人。

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