# Target Oriented High Resolution SAR Image Formation via Semantic   Information Guided Regularizations

**Authors:** Biao Hou, Zaidao Wen, Licheng Jiao, Qian Wu

arXiv: 1704.07082 · 2018-05-09

## TL;DR

This paper introduces a semantic information guided regularization framework for SAR image formation, improving target focus and clutter suppression by leveraging semantic priors and high-level regularizers.

## Contribution

It proposes a novel semantic regularizer and high-level prior-driven regularizer for target-oriented SAR imaging, enabling unsupervised semantic label inference and enhanced image quality.

## Key findings

- Enhanced target scattering in SAR images
- Superior clutter suppression compared to existing methods
- Effective in unsupervised semantic label inference

## Abstract

Sparsity-regularized synthetic aperture radar (SAR) imaging framework has shown its remarkable performance to generate a feature enhanced high resolution image, in which a sparsity-inducing regularizer is involved by exploiting the sparsity priors of some visual features in the underlying image. However, since the simple prior of low level features are insufficient to describe different semantic contents in the image, this type of regularizer will be incapable of distinguishing between the target of interest and unconcerned background clutters. As a consequence, the features belonging to the target and clutters are simultaneously affected in the generated image without concerning their underlying semantic labels. To address this problem, we propose a novel semantic information guided framework for target oriented SAR image formation, which aims at enhancing the interested target scatters while suppressing the background clutters. Firstly, we develop a new semantics-specific regularizer for image formation by exploiting the statistical properties of different semantic categories in a target scene SAR image. In order to infer the semantic label for each pixel in an unsupervised way, we moreover induce a novel high-level prior-driven regularizer and some semantic causal rules from the prior knowledge. Finally, our regularized framework for image formation is further derived as a simple iteratively reweighted $\ell_1$ minimization problem which can be conveniently solved by many off-the-shelf solvers. Experimental results demonstrate the effectiveness and superiority of our framework for SAR image formation in terms of target enhancement and clutters suppression, compared with the state of the arts. Additionally, the proposed framework opens a new direction of devoting some machine learning strategies to image formation, which can benefit the subsequent decision making tasks.

## Full text

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## Figures

22 figures with captions in the complete paper: https://tomesphere.com/paper/1704.07082/full.md

## References

50 references — full list in the complete paper: https://tomesphere.com/paper/1704.07082/full.md

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Source: https://tomesphere.com/paper/1704.07082