Efficient Estimation of a Sparse Delay-Doppler Channel

Alisha Zachariah
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Abstract

Multiple wireless sensing tasks, e.g., radar detection for driver safety, involve estimating the "channel" or relationship between signal transmitted and received. In this paper, we focus specifically on the delay-doppler channel. This channel model has recently become relevant on the heels of the mmWave breakthrough, because the signals used experience a significant doppler effect. Additionally, high resolution delay-doppler estimation is often desirable, and one standard approach to achieving this is to use signals of large bandwidth, which is feasible in the mmWave realm. This approach, however, results in a tension with the desire for efficiency because, in particular, large bandwidth immediately implies that the signals in play live in a space of very high dimension N (e.g., ~ 106 in some applications), as per the Shannon-Nyquist sampling theorem.To address this, in this paper we propose a novel randomized algorithm for channel estimation in the k-sparse setting (e.g., k objects in radar detection), with sampling and space complexity on the order of k(log N)2, and arithmetic complexity on the order of k(log N)3 + k2, for N sufficiently large.To the best of our knowledge, the algorithm is the first of this nature. It seems to be extremely efficient, yet it is just a simple combination of three ingredients, two of which are well-known and widely used, namely digital chirp signals and discrete Gaussian filter functions, and the third being recent developments in Sparse Fast Fourier Transform algorithms.
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稀疏延迟多普勒信道的有效估计
多种无线传感任务,例如,用于驾驶员安全的雷达探测,涉及估计“通道”或发送和接收信号之间的关系。在本文中,我们特别关注延迟多普勒信道。随着毫米波的突破,这种信道模型最近变得相关,因为所使用的信号经历了显著的多普勒效应。此外,高分辨率延迟多普勒估计通常是可取的,实现这一目标的一种标准方法是使用大带宽的信号,这在毫米波领域是可行的。然而,这种方法导致了对效率的渴望的紧张,因为,特别是,大带宽立即意味着信号在非常高维N的空间中(例如,在某些应用中,~ 106),根据Shannon-Nyquist采样定理。为了解决这个问题,在本文中,我们提出了一种新的随机化算法,用于k-稀疏设置(例如,雷达探测中的k个对象)的信道估计,采样和空间复杂度为k(log N)2阶,对于N足够大,算法复杂度为k(log N)3 + k2阶。据我们所知,该算法是第一个具有这种性质的算法。它看起来非常有效,但它只是三种成分的简单组合,其中两种成分是众所周知的和广泛使用的,即数字啁啾信号和离散高斯滤波函数,第三种是稀疏快速傅里叶变换算法的最新发展。
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Belief Propagation Pattern-Coupled Sparse Bayesian Learning for Non-Stationary Uplink Channel Estimation Over Massive-MIMO Based 5G Mobile Wireless Networks Efficient Estimation of a Sparse Delay-Doppler Channel Deep Learning based Affective Sensing with Remote Photoplethysmography CISS 2020 TOC Fundamental Limitations in Sequential Prediction and Recursive Algorithms: Lp Bounds via an Entropic Analysis
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