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LGRS
2016

Ship Detection in SAR Imagery via Variational Bayesian Inference

8 years 13 days ago
Ship Detection in SAR Imagery via Variational Bayesian Inference
—In this letter, we propose a novel ship detection method in synthetic aperture radar (SAR) imagery via variational Bayesian inference. First, we establish the ship detection probabilistic model which decomposes the SAR image as the sum of a sparse component associated with ships and a sea clutter component. Then, we introduce hierarchical priors of the latent variables in the model and use variational Bayesian inference to estimate the posterior distributions of the latent variables. The proposed method is an automatic iterative process without any sliding window. Experimental results accomplished over synthetic data and a RADARSAT-2 SAR image demonstrate that the proposed method can achieve state-of-the-art ship detection performance.
Shengli Song, Bin Xu, Zenghui Li, Jian Yang
Added 07 Apr 2016
Updated 07 Apr 2016
Type Journal
Year 2016
Where LGRS
Authors Shengli Song, Bin Xu, Zenghui Li, Jian Yang
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