1 / 25

A Sparse Signal Reconstruction Perspective for Source Localization with Sensor Arrays

A Sparse Signal Reconstruction Perspective for Source Localization with Sensor Arrays. Alan Willsky Contributors: Dmitry Malioutov, Müjdat Çetin SensorWeb MURI Review Meeting December 2, 2005. Source Localization Problem. Source localization based on passive sensor measurements

arwen
Download Presentation

A Sparse Signal Reconstruction Perspective for Source Localization with Sensor Arrays

An Image/Link below is provided (as is) to download presentation Download Policy: Content on the Website is provided to you AS IS for your information and personal use and may not be sold / licensed / shared on other websites without getting consent from its author. Content is provided to you AS IS for your information and personal use only. Download presentation by click this link. While downloading, if for some reason you are not able to download a presentation, the publisher may have deleted the file from their server. During download, if you can't get a presentation, the file might be deleted by the publisher.

E N D

Presentation Transcript


  1. A Sparse Signal Reconstruction Perspective for Source Localization with Sensor Arrays Alan Willsky Contributors: Dmitry Malioutov, Müjdat Çetin SensorWeb MURI Review Meeting December 2, 2005

  2. Source Localization Problem • Source localization based on passive sensor measurements • Our approach: View the problem as one of imaging a “source density” over the field of regard • Ill-posed inverse problem (overcomplete basis representation) • Favor sparsefields with concentrated densities

  3. Contributions/Highlights • Source localization framework using lp-norm-based sparsity constraints • Efficient techniques for synergistic use of all data and efficient algorithms for numerical solution • Theoretical results: • Justification based on properties of the data and human goals • Solution of combinatorial optimization problems by computationally feasible algorithms! • Extensive performance analysis on simulated data • Self-calibration for sensor location uncertainties • Experimental results on ARL’s acoustic data

  4. Data fidelity Regularizing sparsity constraint Source Localization Framework • Cost functional (notional): • Observation model: Noise Sensor measurements Array manifold matrix Unknown “source density” • Role of the regularizing constraint : • Preservation of strong features (source densities) • Preference of sparse source density field • Can resolve closely-spaced radiating sources

  5. Data Processing and Optimization Algorithms • SVD-based approach for processing and using multiple time or frequency snapshots efficiently and synergistically • Two numerical optimization algorithms: • One based on half-quadratic regularization • One based on second-order cone programming and interior point algorithms • Fast multiresolution approach for iteratively refining the search around likely source locations

  6. Theoretical Results onlp regularization • Observations: • Preferring the optimally sparse solution would involvel0-norms • But that requires solving combinatorial optimization problems • lp-norm-based techniques have been empirically observed to yield solutions that look sparse • Question: Can we ever get the optimally sparse solution using lp–norms? • Interestingly, the answer, as we have found out, is YES! • Provided that the actual spatial spectrum is sparse enough • This provides a rigorous characterization of the lp–sparsity link • As a result, we can solve a combinatorial optimization problem by tractable algorithms!

  7. Performance Analysis on Simulated Data • Narrow-band and wide-band signals • Far-field and near-field sources • Incoherent and coherent (due to multipath) sources • Linear, circular, cross, rectangular arrays • Wide range of SNRs • Wide range of the number of snapshots • We will show only a subset of this analysis

  8. Narrowband, uncorrelated sources – high SNR • DOAs: 65, 70 • SNR = 10 dB • Far-field • 200 time samples • Uniform linear array with 8 sensors

  9. Narrowband, uncorrelated sources – low SNR • Far-field • 200 time samples • Uniform linear array with 8 sensors • DOAs: 65, 70 • SNR = 0 dB

  10. Narrowband, correlated sources • Far-field • 200 time samples • Uniform linear array with 8 sensors • DOAs: 63, 73 • SNR = 20 dB

  11. Robustness to limitations in data quantity Single time-sample processing • Uncorrelated sources • Uniform linear array with 8 sensors • DOAs: 43, 73 • SNR = 20 dB

  12. Resolving many sources • 7 uncorrelated sources • Uniform linear array with 8 sensors

  13. Estimator Variance and the CRB • Correlated sources • Uniform linear array with 8 sensors • DOAs: 43, 73 • Each point on curve average of 50 trials

  14. MUSIC Capon’s method (MVDR) Proposed Multi-band example – low SNR Underlying true spectrum

  15. Extension to Self-calibration • What if we don’t know the sensor locations exactly? • Extended our framework to include optimization over sensor locations • Setup for experiments: • Far-field case • Narrowband signals • Linear array with 15 sensors • Two uncorrelated sources • DOAs: 45, 75 • SNR = 30 dB • Sensor locations perturbed with a standard deviation of 1/3 of the nominal sensor spacing

  16. Moderate calibration errors can be compensated up to intrinsic ambiguities Self-calibration Example

  17. Validation on real data provided by ARL ARL Field Experiment Setup • Six acoustic sensor arrays in oval loop. • Each has a circular array configuration with seven microphones. • Tanks and trucks travel on oval loop or on nearby asphalt road.

  18. Sensor Configuration

  19. Results on single-vehicle data

  20. Results on multiple-vehicle data - I

  21. Results on multiple-vehicle data - I • A temporal slice – (when the vehicles are closest)

  22. Results on multiple-vehicle data – II (limited observations)

  23. Results on multiple-vehicle data – III (limited bandwidth)

  24. Results on multiple-vehicle data – IV (low SNR)

  25. Summary • Sparse signal reconstruction framework & algorithms for source localization with passive sensor arrays • Theoretical analysis justifying the formulation • Extensive performance analysis • Superior source localization performance (Superresolution, Reduced artifacts) • Robustness to resource limitations (SNR, Observation time, Available aperture) • Self-calibration capability • Fruitful interactions with ARL • Validation on ARL field data • Adaptation to signal structures of interest to the Army (including multiband harmonic sources) • Collaboration with Dr. Brian Sadler & successful application of this framework to estimation of sparse communication channels

More Related