Abstract

This article presents Bayes’ theorem for wavelength-resolution synthetic aperture radar (SAR) change detection method development. Different change detection methods can be derived using Bayes’ theorem in combination with the target model, clutter-plus-noise model, iterative implementation, and noniterative implementation. As an example of the Bayes’ theorem use for wavelength-resolution SAR change detection method development, we propose a simple change detection method with a clutter-plus-noise model and noniterative implementation. In spite of simplicity, the proposed method provides a very competitive performance in terms of probability of detection and false alarm rate. The best result was a probability of detection of $\text{98.7}\%$ versus a false alarm rate of one per square kilometer.

Highlights

  • S YNTHETIC aperture radar (SAR) plays an important role in surveillance, geoscience, and remote sensing applications

  • synthetic aperture radar (SAR) change detection has been researched for many decades and it is an important research area used for different applications, such as detection of concealed targets [1], ground scene monitoring [2], polarimetry [3], and even GMTI [4]

  • We have developed a simple change detection method using a clutter-plus-noise model with a noniterative approach

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Summary

INTRODUCTION

S YNTHETIC aperture radar (SAR) plays an important role in surveillance, geoscience, and remote sensing applications. Based on Bayes’ theorem, the probability of change in a SAR scene can be estimated from the data histogram of reference and surveillance images and either a target model or a clutter-plus-noise model. This results in two directions for change detection method development: one is based on the target model and the other on the clutter-plus-noise model. Initial evaluation of the change detection performance considered very few images and targets, e.g., only two targets and two images in [22] For this reason, the clutter and noise model and the noniterative implementation are focused on this article.

Bayes’ Theorem in the SAR Change Detection Scenario
CHANGE DETECTION METHOD
Clutter-Plus-Noise Distribution Model
Processing Scheme
EXPERIMENTAL RESULTS
Implementation Aspects
Method Evaluation
CONCLUSION

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