PLFNets: Interpretable Complex-Valued Parameterized Learnable Filters for Computationally Efficient RF Classification

Sabyasachi Biswas;Cemre Omer Ayna;Ali Cafer Gurbuz
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Abstract

Radio frequency (RF) sensing applications such as RF waveform classification and human activity recognition (HAR) demand real-time processing capabilities. Current state-of-the-art techniques often require a two-stage process for classification: first, computing a time-frequency (TF) transform, and then applying machine learning (ML) using the TF domain as the input for classification. This process hinders the opportunities for real-time classification. Consequently, there is a growing interest in direct classification from raw IQ-RF data streams. Applying existing deep learning (DL) techniques directly to the raw IQ radar data has shown limited accuracy for various applications. To address this, this article proposes to learn the parameters of structured functions as filterbanks within complex-valued (CV) neural network architectures. The initial layer of the proposed architecture features CV parameterized learnable filters (PLFs) that directly work on the raw data and generate frequency-related features based on the structured function of the filter. This work presents four different PLFs: Sinc, Gaussian, Gammatone, and Ricker functions, which demonstrate different types of frequency-domain bandpass filtering to show their effectiveness in RF data classification directly from raw IQ radar data. Learning structured filters also enhances interpretability and understanding of the network. The proposed approach was tested on both experimental and synthetic datasets for sign and modulation recognition. The PLF-based models achieved an average of 47% improvement in classification accuracy compared with a 1-D convolutional neural network (CNN) on raw RF data and an average 7% improvement over CNNs with real-valued learnable filters for the experimental dataset. It also matched the accuracy of a 2-D CNN applied to micro-Doppler ( $\mu $ D) spectrograms while reducing computational latency by around 75%. These results demonstrate the potential of the proposed model for a range of RF sensing applications with enhanced accuracy and computational efficiency.
PLFNets:用于高效计算射频分类的可解释复值参数化可学习滤波器
射频(RF)传感应用,如射频波形分类和人类活动识别(HAR),需要实时处理能力。目前最先进的技术通常需要两个阶段的分类过程:首先计算时频 (TF) 变换,然后将 TF 域作为分类的输入应用机器学习 (ML)。这一过程阻碍了实时分类的机会。因此,人们对从原始 IQ-RF 数据流中直接进行分类的兴趣与日俱增。在各种应用中,将现有的深度学习(DL)技术直接应用于原始 IQ 雷达数据的准确性有限。为了解决这个问题,本文提出在复值(CV)神经网络架构中学习结构化函数的参数作为滤波器库。拟议架构的初始层采用 CV 参数化可学习滤波器 (PLF),可直接处理原始数据,并根据滤波器的结构函数生成频率相关特征。这项工作提出了四种不同的 PLF:Sinc、Gaussian、Gammatone 和 Ricker 函数,展示了不同类型的频域带通滤波器,显示了它们在直接从原始 IQ 雷达数据进行射频数据分类时的有效性。学习结构化滤波器还能增强网络的可解释性和理解性。所提出的方法在实验数据集和合成数据集上进行了符号和调制识别测试。在原始射频数据上,与一维卷积神经网络(CNN)相比,基于 PLF 的模型平均提高了 47% 的分类准确率;在实验数据集上,与使用实值可学习滤波器的 CNN 相比,平均提高了 7%。它还与应用于微多普勒($\mu $ D)频谱图的二维 CNN 的准确性相当,同时将计算延迟减少了约 75%。这些结果证明了所提出的模型在一系列射频传感应用中的潜力,并提高了准确性和计算效率。
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