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
Summary
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.
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More From: IEEE Journal of Selected Topics in Applied Earth Observations and Remote Sensing
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