Design of Optimal Measurement Matrix for Compressive Detection
Konferenz: ISWCS 2013 - The Tenth International Symposium on Wireless Communication Systems
27.08.2013 - 30.08.2013 in Ilmenau, Deutschland
Tagungsband: ISWCS 2013
Seiten: 5Sprache: EnglischTyp: PDF
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Autoren:
Bai, Huang; Zhu, Zhihui; Li, Gang; Li, Sheng (Zhejiang Provincial Key Laboratory for Signal Processing, College of Information Engineering, Zhejiang University of Technology, Hangzhou 310023, Zhejiang, P.R. China)
Inhalt:
This paper considers the problem of designing measurement matrix Φ for compressive detection. Since the objective of detection is to extract certain information from measurements rather than to reconstruct the sparse signals, the optimal measurement matrix design is formulated in terms of maximizing the detection probability. Based on the relationship between Φ and the detection probability, it is revealed that the solutions are only related to the right singular vectors of Φ. The optimal Φ are obtained for a given sparse signal pattern. For the situation when the sparse signal patterns are unknown, the optimal measurement design problem is defined as maximizing the worst-case detection probability. An algorithm is derived to solve the corresponding problem. Simulation results show that the measurement matrix obtained using the proposed algorithm outperforms the popularly used random matrix in terms of detection probability.