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On the Angular Resolution Limit uncertainty under compound Gaussian noise
- Source :
- Signal Processing, Signal Processing, Elsevier, 2019, 164, pp.217-224
- Publication Year :
- 2019
- Publisher :
- Elsevier BV, 2019.
-
Abstract
- The Angular Resolution Limit (ARL) is a fundamental statistical metric to quantify our ability to resolve two closely-spaced narrowband far-field complex sources. This statistical quantity, is defined as the minimal angular deviation between the two sources to be separated for a prefixed detection-based performance. In this work, we assume that the sources of interest are corrupted by a compound-Gaussian noise. In the standard literature, denoting with δ the true distance between the two sources, the derivation of the ARL is based on the statistical distribution of the Generalized Likelihood Ratio Test (GLRT) for a binary test where there is only one source under the null hypothesis (i.e., δ = 0 ) and two sources under the alternative hypothesis δ ≠ 0. In literature, the true angular distance (TAD) is generally considered as an unknown deterministic parameter, then a maximum likelihood-based estimation of δ is exploited in the GLRT. In this paper, breaking away from existing contributions, we suppose that the TAD is a random variable, Gaussian distributed, meaning that δ ∼ N ( δ 0 , σ δ 2 ) . The TAD uncertainty can have many causes as for instance moving sources or/and platform, antenna calibration error, etc. In this work, a generic and flexible (but common) statistical model of the uncertain knowledge of the TAD is preferred instead of a too much specified error model. The degree of randomness (or uncertainty) is quantified by the ratio ξ = δ 0 2 / σ δ 2 . The standard framework of the GLRT is no longer feasible for our problem formulation. To cope with the compound Gaussian noise modeling and the random model of the TAD, a powerful upper bound from information/geometry theory is exploited in this work. More precisely, a new expected Chernoff Upper Bound (CUB) on the minimal error probability is introduced. Based on the analysis of this upper bound, we show that the expected-CUB is highly dependent on the degree of uncertainty, ξ. As a by-product, the optimal s-value in the Chernoff divergence for which the expected-CUB is the tightest upper bound is analytically studied and the role of the mean value δ0 in the ARL context is analyzed.
- Subjects :
- Gaussian
DOA estimation
02 engineering and technology
[STAT.OT]Statistics [stat]/Other Statistics [stat.ML]
Compoung Gaussian noise
Upper and lower bounds
symbols.namesake
0202 electrical engineering, electronic engineering, information engineering
Statistical physics
Electrical and Electronic Engineering
Divergence (statistics)
Randomness
[SPI.SIGNAL] Engineering Sciences [physics]/Signal and Image processing
Mathematics
Angular resolution limit
Angular resolution limit, Compoung Gaussian noise, DOA estimation
020206 networking & telecommunications
Statistical model
[STAT.OT] Statistics [stat]/Other Statistics [stat.ML]
[STAT] Statistics [stat]
[STAT]Statistics [stat]
Control and Systems Engineering
Gaussian noise
Likelihood-ratio test
Signal Processing
symbols
020201 artificial intelligence & image processing
Computer Vision and Pattern Recognition
[SPI.SIGNAL]Engineering Sciences [physics]/Signal and Image processing
Random variable
Software
Subjects
Details
- ISSN :
- 01651684 and 18727557
- Volume :
- 164
- Database :
- OpenAIRE
- Journal :
- Signal Processing
- Accession number :
- edsair.doi.dedup.....de9320627b5746eec12e5fffce76ceb9