Generalized Statistical Complexity of SAR Imagery
Eliana S. de Almeida, Antonio Carlos de Medeiros, Osvaldo A. Rosso and, Alejandro C. Frery

TL;DR
This paper introduces a generalized statistical complexity measure for SAR imagery that combines entropy and divergence to effectively identify various targets in speckle-noise corrupted images.
Contribution
It proposes a new complexity measure based on Shannon entropy and Hellinger distance tailored for SAR images modeled by the G0 law, enhancing target detection capabilities.
Findings
The measure effectively distinguishes different target types.
It captures the order/disorder in speckle-affected images.
The approach is validated on intensity SAR images.
Abstract
A new generalized Statistical Complexity Measure (SCM) was proposed by Rosso et al in 2010. It is a functional that captures the notions of order/disorder and of distance to an equilibrium distribution. The former is computed by a measure of entropy, while the latter depends on the definition of a stochastic divergence. When the scene is illuminated by coherent radiation, image data is corrupted by speckle noise, as is the case of ultrasound-B, sonar, laser and Synthetic Aperture Radar (SAR) sensors. In the amplitude and intensity formats, this noise is multiplicative and non-Gaussian requiring, thus, specialized techniques for image processing and understanding. One of the most successful family of models for describing these images is the Multiplicative Model which leads, among other probability distributions, to the G0 law. This distribution has been validated in the literature as an…
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