Abstract

Spread Spectrum techniques (SS) were first developed for military applications, but currently, they have commercial applications. SS provides secure communication and allows multiple accesses for same radio spectrum. So, most Wireless Local Area Network (WLAN) systems use it, as do Cognitive Radios (CR), space systems and Global Positioning Systems (GPS). Direct Sequence Spread Spectrum (DSSS) and frequency hopped spread spectrum (FHSS) are the two most-used techniques today. Nowadays radio spectrum has become very crowded and so now there is a need for spectrum efficiency. Automatic SS classification presents a rather difficult problem, especially if the parameters, such as the signal power, carrier frequency, etc., are unknown. This research takes a new direction; it deploys the Gray Level Co-occurrence Matrix (GLCM) to capture statistical features of SS signals. Using GLCM, 22 features are extracted for each vector of signal. Analyzing the signals is done in the time domain which measures the variation of amplitude of signals with time. Therefore, the main contribution is to apply and show how GLCM improves the identification accuracy of the two signals in presence of noise. The proposed model achieves considerably accurate results even with a low SNR. GLCM features help classifiers to achieve average accuracy 84% and reach 100% signal identification at a zero SNR. To prove the superiority of these features, a variety of clustering methods are applied, such as centroid, connectivity, model-based and message-passing models. Clustering performance results based on GLCM features are compared With Principal Components Analysis (PCA), Kernel-based Principal Components Analysis (KPCA) and fast Independent Components Analysis (Fast-ICA). Clustering results are evaluated with external and internal validity indices. The accuracy was tested over 26 levels of Signal-to-Noise Ratios (SNR).

Highlights

  • Spread Spectrum signals (SS) have an extra modulation called Code Division Multiple Access (CDMA), which offers one of the main methods for managing multiple accesses in broadcasts

  • Its weakness is in big data handling (Sun, 2017) due to its message-exchange technique. After applying these various clustering techniques, we evaluated clustering accuracy with external and internal indices (Rezaei, 2016), to demonstrate the quality of the proposed features

  • Many methods become useless when there is not much prior information, in which case blind identification becomes especially significant. Another direction based on image processing is raised, such as extracting the parameters of Frequency-Hopping (FH) signals based on the spectrogram obtained by Short-Time Fourier Transform (STFT), in time–frequency domain (Fu et al, 2017)

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Summary

Introduction

Spread Spectrum signals (SS) have an extra modulation called Code Division Multiple Access (CDMA), which offers one of the main methods for managing multiple accesses in broadcasts. This research uses clustering, which is an unsupervised method, as it has no need for complex training methods or ground-truth labels during the learning process It is based on investigating characteristics and the intrinsic structure of the data. Some researchers tried data points with minimum entropy values, while others used k-means++ or evolution algorithms to find the initial center. Two methods are applied to obtain the initial centers – choosing data points randomly or by using subtractive clustering:. Subtractive clustering is used as an isolated clustering technique and as a method to generate the initial center for use in all centroid-based clustering It only requires a measure of similarity between groups of data points as a key and builds a binary tree of them. PCA is implemented in MATLAB, KPCA is based on (Wang, 2014) and Fast-ICA on (AU, 2005)

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