We propose a feature-extraction procedure based on the statistical characterization of waveforms, applied as a fast pre-processing stage in a pattern recognition task using simple artificial neural network models. This procedure involves measuring a set of 30 parameters, including moments and cumulants obtained from the waveform, its derivative, and its integral. The technique is presented as an extension of the Statistical Signal Characterization method, which is already established in the literature, and we referred to it as ESSC. As a testing methodology, we employed a procedure to distinguish a pulse-like signal from different versions of itself with altered or deformed frequency spectra, under various signal-to-noise ratio (SNR) conditions of Gaussian white noise. The recognition task was performed by machine learning networks using the proposed ESSC feature extraction method. Additionally, we compared the results with those obtained using raw data inputs in deep learning networks. The algorithms were trained and tested on cases involving Sinc-, Gaussian-, and Chirp-pulse waveforms. We measure accuracy and execution time for the different algorithms solving these pattern-recognition cases, and evaluate the architectural complexity of building such networks. We conclude that a simple multi-layer perceptron network using ESSC can achieve an accuracy of around 90%, comparable to that of deep learning algorithms, when solving pattern recognition tasks in practical scenarios with SNR above 20dB. Additionally, this approach offers an execution time approximately 4 times shorter and significantly lower network construction complexity, enabling its use in low-resource computational systems.


翻译:我们提出一种基于波形统计表征的特征提取流程,作为使用简单人工神经网络模型进行模式识别任务的快速预处理阶段。该流程涉及测量30个参数集合,包括从波形、其导数及其积分中获取的矩和累积量。该技术作为文献中已确立的统计信号表征方法的扩展提出,我们将其称为ESSC。作为测试方法,我们采用了一种在多种高斯白噪声信噪比条件下,区分脉冲类信号与其频率谱发生畸变或变形的不同版本的程序。识别任务由采用所提出的ESSC特征提取方法的机器学习网络执行。此外,我们将所得结果与在深度学习网络中使用原始数据输入获得的结果进行了比较。算法在涉及Sinc脉冲、高斯脉冲和线性调频脉冲波形的情况下进行了训练和测试。我们测量了不同算法解决这些模式识别案例的准确率和执行时间,并评估了构建此类网络的架构复杂性。我们得出结论:在信噪比高于20dB的实际场景中解决模式识别任务时,使用ESSC的简单多层感知器网络可实现约90%的准确率,与深度学习算法相当。此外,该方法提供约4倍更短的执行时间以及显著更低的网络构建复杂度,使其能够在低资源计算系统中使用。

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