Presentation + Paper
28 April 2017 A novel latent gaussian copula framework for modeling spatial correlation in quantized SAR imagery with applications to ATR
Brian T. Thelen, Ismael J. Xique, Joseph W. Burns, G. Steven Goley, Adam R. Nolan, Jonathan W. Benson
Author Affiliations +
Abstract
With all of the new remote sensing modalities available, and with ever increasing capabilities and frequency of collection, there is a desire to fundamentally understand/quantify the information content in the collected image data relative to various exploitation goals, such as detection/classification. A fundamental approach for this is the framework of Bayesian decision theory, but a daunting challenge is to have significantly flexible and accurate multivariate models for the features and/or pixels that capture a wide assortment of distributions and dependen- cies. In addition, data can come in the form of both continuous and discrete representations, where the latter is often generated based on considerations of robustness to imaging conditions and occlusions/degradations. In this paper we propose a novel suite of ”latent” models fundamentally based on multivariate Gaussian copula models that can be used for quantized data from SAR imagery. For this Latent Gaussian Copula (LGC) model, we derive an approximate, maximum-likelihood estimation algorithm and demonstrate very reasonable estimation performance even for the larger images with many pixels. However applying these LGC models to large dimen- sions/images within a Bayesian decision/classification theory is infeasible due to the computational/numerical issues in evaluating the true full likelihood, and we propose an alternative class of novel pseudo-likelihoood detection statistics that are computationally feasible. We show in a few simple examples that these statistics have the potential to provide very good and robust detection/classification performance. All of this framework is demonstrated on a simulated SLICY data set, and the results show the importance of modeling the dependencies, and of utilizing the pseudo-likelihood methods.
Conference Presentation
© (2017) COPYRIGHT Society of Photo-Optical Instrumentation Engineers (SPIE). Downloading of the abstract is permitted for personal use only.
Brian T. Thelen, Ismael J. Xique, Joseph W. Burns, G. Steven Goley, Adam R. Nolan, and Jonathan W. Benson "A novel latent gaussian copula framework for modeling spatial correlation in quantized SAR imagery with applications to ATR", Proc. SPIE 10201, Algorithms for Synthetic Aperture Radar Imagery XXIV, 102010G (28 April 2017); https://doi.org/10.1117/12.2267833
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KEYWORDS
Data modeling

Synthetic aperture radar

Composites

Statistical analysis

Statistical modeling

Algorithm development

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