2019
DOI: 10.1109/access.2019.2960584
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An Improved SVM-Based Spatial Spectrum Sensing Scheme via Beamspace at Low SNRs

Abstract: Most spectrum sensing algorithms mainly use the characteristics of frequency, time, and geographical dimensions to detect spectrum holes. In this paper, we propose a novel spectrum sensing scheme from the space domain by using beamspace transformation and the support vector machine technology. First, a model of beamspace transformation is proposed for the case of complex calculations in a sizeable multi-antenna system. This beamspace transformation has the ability of spatial filtering, which can not only decre… Show more

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Cited by 6 publications
(1 citation statement)
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“…Also, SVM can even handle 1-bit sensor information to get satisfactory results, which is cumborsome for other ML techniques. Applying SVM to construct 2D or even 3D spectrum map has a fundamental difference from spectrum sensing for point-to-point communication, while adopting linearly separable SVM [85]. Even though spectrum sharing concept is studied for ABC networks in [86], how to obtain spectrum map and how to perform spectrum sensing via ABCs are not clear.…”
Section: Support Vector Machine To Classify Spectrum Mapmentioning
confidence: 99%
“…Also, SVM can even handle 1-bit sensor information to get satisfactory results, which is cumborsome for other ML techniques. Applying SVM to construct 2D or even 3D spectrum map has a fundamental difference from spectrum sensing for point-to-point communication, while adopting linearly separable SVM [85]. Even though spectrum sharing concept is studied for ABC networks in [86], how to obtain spectrum map and how to perform spectrum sensing via ABCs are not clear.…”
Section: Support Vector Machine To Classify Spectrum Mapmentioning
confidence: 99%