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Proceedings ArticleDOI

Almost exact threshold calculations for covariance absolute value detection algorithm

Vidyadhar Upadhya, +1 more
- pp 1-5
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TLDR
In this article, the authors proposed a robust test statistic which uses the Bartlett decomposition of the sample covariance matrix and its performance is compared with CAV using Monte-Carlo simulation.
Abstract
Design of robust test statistics which mitigate the channel and noise uncertainties are the essential requirement of detection applications. Covariance absolute value (CAV) detection is one of the non-parametric detection methods which claims robustness [1]. Achieving the theoretical probability of detection performance depends on the accuracy in calculating the thresholding parameter, which in turn depends on the distribution of the test statistic under the null hypothesis. Since the exact analysis of distribution is cumbersome, approximation techniques are used. We present approximation techniques which achieve performance very close to the one obtained from exact distribution of the test statistic (using Monte-Carlo simulation). Further, an equivalent test statistic compared to CAV is proposed which uses the Bartlett decomposition of the sample covariance matrix and its performance is compared with CAV. The robustness of the proposed test statistic is verified for the noise uncertainty model assumed [2].

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Citations
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Journal ArticleDOI

Spectrum Sensing Using Weighted Covariance Matrix in Rayleigh Fading Channels

TL;DR: Experiments with simulated multiple-antenna signals and field measurement digital television signals show that the proposed weighted detection can significantly outperform the original covariance-based detection.
Journal ArticleDOI

On Covariance Matrix Based Spectrum Sensing Over Frequency-Selective Channels

TL;DR: This paper proposes a new detector which employs only the magnitude spectra of received signals and therefore achieves considerable performance gain and Simulation results verify the theoretical analyses and demonstrate the superior performance of the proposed detector.
Book ChapterDOI

Blind Spectrum Sensing Based on the Statistical Covariance Matrix and K-Median Clustering Algorithm

TL;DR: This article proposes a blind spectrum sensing method based on the sample covariance matrix and K-median clustering algorithm, which has better sensing performance than some popular sensing algorithms based on random matrix theory or information geometry.
Proceedings ArticleDOI

Blind non-parametric statistics for multichannel detection based on statistical covariances

TL;DR: The analysis presented verifies the invariability of threshold value and identifies a few specific scenarios where the proposed statistics have better performance compared to generalised likelihood ratio test (GLRT) statistics.
Posted Content

Blind Non-parametric Statistics for Multichannel Detection Based on Statistical Covariances

TL;DR: In this paper, the authors consider the problem of detecting the presence of a spatially correlated multichannel signal corrupted by additive Gaussian noise (i.i.d across sensors) without prior knowledge about the system parameters such as the noise variance, number of sources and correlation among signals.
References
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Book

An Introduction to Multivariate Statistical Analysis

TL;DR: In this article, the distribution of the Mean Vector and the Covariance Matrix and the Generalized T2-Statistic is analyzed. But the distribution is not shown to be independent of sets of Variates.
Book

Introduction to Space-Time Wireless Communications

TL;DR: This book is an accessible introduction to every fundamental aspect of space-time wireless communications and a powerful tool for improving system performance that already features in the UMTS and CDMA2000 mobile standards.
Journal ArticleDOI

SNR Walls for Signal Detection

TL;DR: It is argued that the tension between primary and secondary users is captured by the technical question of computing the optimal tradeoff between the primary user's capacity and the secondary user's sensing robustness as quantified by the SNR wall.
Journal ArticleDOI

Spectrum-Sensing Algorithms for Cognitive Radio Based on Statistical Covariances

TL;DR: In this article, the authors proposed a spectrum-sensing algorithm based on the sample covariance matrix calculated from a limited number of received signal samples, and two test statistics are then extracted from the sampled covariance matrices.
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