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Detection of unknown and arbitrary sparse signals against noise
by
Lei, Chuan
, Zhang, Jun
, Gao, Qiang
in
Applied sciences
/ arbitrary nonzero entries
/ arbitrary sparse signal detection problem
/ Asymptotic properties
/ Background noise
/ Chernoff‐consistent detection
/ Computer simulation
/ Decay
/ Detection, estimation, filtering, equalization, prediction
/ Detectors
/ Deviation
/ deviation analysis
/ error probability
/ error statistics
/ Estimates
/ Exact sciences and technology
/ Information, signal and communications theory
/ likelihood ratio test‐with‐sparse estimation
/ LRT‐SE
/ Mathematical analysis
/ Neyman‐Pearson hypothesis‐testing problem model
/ numerical analysis
/ Sampling, quantization
/ Signal and communications theory
/ signal denoising
/ signal detection
/ Signal, noise
/ statistical testing
/ Telecommunications and information theory
/ unknown sparse signal detection problem
/ unknown support sets
2014
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Detection of unknown and arbitrary sparse signals against noise
by
Lei, Chuan
, Zhang, Jun
, Gao, Qiang
in
Applied sciences
/ arbitrary nonzero entries
/ arbitrary sparse signal detection problem
/ Asymptotic properties
/ Background noise
/ Chernoff‐consistent detection
/ Computer simulation
/ Decay
/ Detection, estimation, filtering, equalization, prediction
/ Detectors
/ Deviation
/ deviation analysis
/ error probability
/ error statistics
/ Estimates
/ Exact sciences and technology
/ Information, signal and communications theory
/ likelihood ratio test‐with‐sparse estimation
/ LRT‐SE
/ Mathematical analysis
/ Neyman‐Pearson hypothesis‐testing problem model
/ numerical analysis
/ Sampling, quantization
/ Signal and communications theory
/ signal denoising
/ signal detection
/ Signal, noise
/ statistical testing
/ Telecommunications and information theory
/ unknown sparse signal detection problem
/ unknown support sets
2014
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Detection of unknown and arbitrary sparse signals against noise
by
Lei, Chuan
, Zhang, Jun
, Gao, Qiang
in
Applied sciences
/ arbitrary nonzero entries
/ arbitrary sparse signal detection problem
/ Asymptotic properties
/ Background noise
/ Chernoff‐consistent detection
/ Computer simulation
/ Decay
/ Detection, estimation, filtering, equalization, prediction
/ Detectors
/ Deviation
/ deviation analysis
/ error probability
/ error statistics
/ Estimates
/ Exact sciences and technology
/ Information, signal and communications theory
/ likelihood ratio test‐with‐sparse estimation
/ LRT‐SE
/ Mathematical analysis
/ Neyman‐Pearson hypothesis‐testing problem model
/ numerical analysis
/ Sampling, quantization
/ Signal and communications theory
/ signal denoising
/ signal detection
/ Signal, noise
/ statistical testing
/ Telecommunications and information theory
/ unknown sparse signal detection problem
/ unknown support sets
2014
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Detection of unknown and arbitrary sparse signals against noise
Journal Article
Detection of unknown and arbitrary sparse signals against noise
2014
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Overview
The detection of sparse signals against background noise is difficult since the information in the signal is only carried by a small portion of it. Prior information is usually assumed to ease detection. This study considers the general unknown and arbitrary sparse signal detection problem when no prior information is available. Under a Neyman–Pearson hypothesis-testing problem model, a new detection scheme referred to as the likelihood ratio test with sparse estimation (LRT-SE) is proposed. The SE technique from the compressive sensing theory is incorporated into the LRT-SE to achieve the detection of sparse signals with unknown support sets and arbitrary non-zero entries. An analysis of the effectiveness of LRT-SE is first given in terms of the characterisation of the conditions for the Chernoff-consistent detection. A large deviation analysis is then given to characterise the error exponent of LRT-SE with respect to the signal-to-noise ratio and the angle between the sparse signal and its estimate. Numerical results demonstrate superior detection performance of the proposed scheme over existing asymptotically optimal sparse detectors for finite signal dimensions. In addition, the simulation shows that the error probability of the proposed scheme decays exponentially with the number of observations.
Publisher
The Institution of Engineering and Technology,Institution of Engineering and Technology,John Wiley & Sons, Inc
Subject
/ arbitrary sparse signal detection problem
/ Chernoff‐consistent detection
/ Decay
/ Detection, estimation, filtering, equalization, prediction
/ Exact sciences and technology
/ Information, signal and communications theory
/ likelihood ratio test‐with‐sparse estimation
/ LRT‐SE
/ Neyman‐Pearson hypothesis‐testing problem model
/ Signal and communications theory
/ Telecommunications and information theory
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