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首页> 外文期刊>IEEE Signal Processing Magazine >Signal Processing for Time-of-Flight Imaging Sensors: An introduction to inverse problems in computational 3-D imaging
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Signal Processing for Time-of-Flight Imaging Sensors: An introduction to inverse problems in computational 3-D imaging

机译:飞行时间成像传感器的信号处理:计算3-D成像逆问题的简介

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摘要

Time-of-flight (ToF) sensors offer a cost-effective and realtime solution to the problem of three-dimensional (3-D) imaging-a theme that has revolutionized our sceneunderstanding capabilities and is a topic of contemporary interest across many areas of science and engineering. The goal of this tutorial-style article is to provide a thorough understanding of ToF imaging systems from a signal processing perspective that is useful to all application areas. Starting with a brief history of the ToF principle, we describe the mathematical basics of the ToF image-formation process, for both time- and frequency-domain, present an overview of important results within the topic, and discuss contemporary challenges where this emerging area can benefit from the signal processing community. In particular, we examine case studies where inverse problems in ToF imaging are coupled with signal processing theory and methods, such as sampling theory, system identification, and spectral estimation, among others. Through this exposition, we hope to establish that ToF sensors are more than just depth sensors; depth information may be used to encode other forms of physical parameters, such as, the fluorescence lifetime of a biosample or the diffusion coefficient of turbid/scattering medium. The MATLAB scripts and ToF sensor data used for reproducing figures in this article are available via the author?s webpage: http://www.mit.edu/~ayush/Code.
机译:飞行时间(ToF)传感器为三维(3-D)成像问题提供了一种经济高效的实时解决方案,这一主题彻底改变了我们对场景的理解能力,并且在许多领域都引起了当代关注科学与工程。本教程风格的文章的目的是从对所有应用领域有用的信号处理角度全面了解ToF成像系统。从ToF原理的简要历史开始,我们描述了时域和频域的ToF图像形成过程的数学基础,概述了本主题中的重要结果,并讨论了该新兴领域的当代挑战可以从信号处理社区中受益。特别是,我们研究了案例研究,其中ToF成像中的逆问题与信号处理理论和方法(例如采样理论,系统识别和频谱估计等)结合在一起。通过本次博览会,我们希望确定ToF传感器不仅仅是深度传感器;深度信息可用于编码其他形式的物理参数,例如生物样品的荧光寿命或混浊/散射介质的扩散系数。本文中用于复制图形的MATLAB脚本和ToF传感器数据可通过作者的网页获得:http://www.mit.edu/~ayush/Code。

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