Adaptive Time-Frequency Synthesis for Waveform Discernment in Wireless Communications

Steve Chan, M. Krunz, Bob Griffin
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引用次数: 4

Abstract

The discernment of waveforms for the purpose of identifying the underlying wireless technologies and validating if observed transmissions are legitimate or not remains a challenge within the communications sector and beyond. Conventional techniques struggle to robustly process Signals under Test (SuTs) in real-time. A particular difficulty relates to the selection of an appropriate window size for the processed data when pertinent contextual information on SuTs is not known a priori. The disadvantage of applying a predetermined fixed window size is that of length and shape (i.e., coarse resolution). In contrast, an adaptive window size offers more optimally tuned resolution. Towards this end, we propose a novel approach that uses an Adaptive Resolution Transform (ART) to either maintain a constant (prespecified) resolution, via a Variable Window Size and Shape (VWSS), or adjust the resolution (again using the VWSS technique) to match latency requirements. Central to this approach is the utilization of Continuous Wavelet Transforms (CWTs), which do not substantively suffer from those energy leakage issues found in more commonly used transforms such as Discrete Wavelet Transforms (DWT). A robust numerical implementation of CWTs is presented via a particular class of Convolutional Neural Networks (CNNs) called Robust Convex Relaxation (RCR)-based Convolutional Long Short-Term Memory Deep Neural Networks (a.k.a., CLSTMDNNs or CLNNs). By employing small convolutional filters, this class leverages deeper cascade learning, which nicely emulates CWTs. In addition to its use for convex relaxation adversarial training, the RCR framework also improves the bound tightening for the successive convolutional layers (which contain the cascading of ever smaller “CWT-like” convolutional filters). In this paper, we explore this particular architecture for its discernment capability among the SuT time series being compared. To operationalize this architectural paradigm, non-conventional Nonnegative Matrix Factorization (NMF) and Multiresolution Matrix Factorization (MMF) is used in conjunction to facilitate the capture of the structure and content of the involved matrices so as to achieve higher resolution and enhanced discernment accuracy. The desired WT (a.k.a., Corresponding WT or CORWT) resulting from the MMF is implemented as a translation-invariant CWT PyWavelet to better illuminate the intricate structural characteristics of the SuT and facilitate the analysis/discernment of their constituent Waveforms of Interest (WoIs). A precomputed hash and lookup table is utilized to facilitate WoI classification and discernment in quasi-real-time.
无线通信中波形识别的自适应时频合成
为了识别底层无线技术和验证观察到的传输是否合法,波形的识别仍然是通信领域内外的一个挑战。传统技术难以实时鲁棒地处理被测信号(SuTs)。一个特别的困难是,当关于sut的相关上下文信息先验未知时,为处理的数据选择适当的窗口大小。应用预定的固定窗口大小的缺点是长度和形状(即粗分辨率)。相比之下,自适应窗口大小提供了更优化的分辨率。为此,我们提出了一种使用自适应分辨率变换(ART)的新方法,通过可变窗口大小和形状(VWSS)来保持恒定(预先指定的)分辨率,或者调整分辨率(再次使用VWSS技术)以匹配延迟要求。这种方法的核心是使用连续小波变换(CWTs),它不会遭受更常用的变换(如离散小波变换(DWT))中发现的能量泄漏问题。CWTs的鲁棒数值实现是通过一类特殊的卷积神经网络(cnn)提出的,称为基于鲁棒凸松弛(RCR)的卷积长短期记忆深度神经网络(又称clstmdnn或clnn)。通过使用小的卷积过滤器,这个类利用了更深层次的级联学习,很好地模拟了cwt。除了用于凸松弛对抗训练之外,RCR框架还改进了连续卷积层(包含越来越小的“cwt样”卷积过滤器的级联)的边界收紧。在本文中,我们探讨了这种特殊的体系结构在被比较的SuT时间序列之间的识别能力。为了实现这一架构范例,将非传统的非负矩阵分解(NMF)和多分辨率矩阵分解(MMF)结合使用,以方便捕获所涉及矩阵的结构和内容,从而实现更高的分辨率和增强的识别精度。由MMF产生的所需WT(也称为对应的WT或CORWT)被实现为一个翻译不变的CWT py小波,以更好地阐明SuT的复杂结构特征,并促进对其组成波形的分析/识别感兴趣(WoIs)。利用预先计算的哈希和查找表来准实时地促进WoI分类和识别。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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