IEEE Journal of Selected Topics in Applied Earth Observations and Remote Sensing | 2021

Analysis and Classification of SAR Textures Using Information Theory

 
 
 
 

Abstract


The use of Bandt–Pompe probability distributions and descriptors of information theory has been presenting satisfactory results with low computational cost in the time series analysis literature\xa0[1]–[3]. However, these tools have limitations when applied to data without time dependency. Given this context, we present a newly proposed technique for texture analysis and classification based on the Bandt–Pompe symbolization for SAR data. It consists of linearizing a 2-D patch of the image using the Hilbert–Peano curve, build an ordinal pattern transition graph that considers the data amplitude encoded into the weight of the edges, obtain a probability distribution function derived from this graph,\xa0and compute information theory descriptors (permutation entropy and statistical complexity) from this distribution and use them as features to feed a classifier. The ordinal pattern graph we propose considers that the edges’ weight is related to the absolute difference of observations, which encodes the information about the data amplitude. This modification considers the unfavorable signal-to-noise ratio of SAR images and leads to the characterization of several types of textures. Experiments with data from Munich urban areas, Guatemala forest regions, and Cape Canaveral ocean samples show the effectiveness of our technique in homogeneous areas, achieving satisfactory separability levels. The two descriptors chosen in this work are easy and quick to calculate and are used as input for a k-nearest neighbor classifier. Experiments show that this technique presents results similar to state-of-the-art techniques that employ a much larger number of features and, consequently, impose a higher computational cost.

Volume 14
Pages 663-675
DOI 10.1109/JSTARS.2020.3031918
Language English
Journal IEEE Journal of Selected Topics in Applied Earth Observations and Remote Sensing

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