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SAR IMAGE COMPRESSION WITH TARGET REGION EXTRACTION AND PRESERVATION IN DECOMPOSED STRUCTURAL COMPONENT

SAR IMAGE COMPRESSION WITH TARGET REGION EXTRACTION AND PRESERVATION IN DECOMPOSED STRUCTURAL COMPONENT
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摘要 With the bandwidth restriction in airborne Synthetic Aperture Radar (SAR)-based hu- man-in-the-loop applications, the acquired SAR images should be compressed with loss to overcome the conflict of image quantity and the response time. In this letter a framework of SAR image compression is described. The SAR image is decomposed into two components, namely structural and textural components. The target region mask is used to retain the important target information by allocating more bits during compression, while less bits is allocated for the background region. The obtained results show that the compressed image using the proposed algorithm has better visual effect under the same bit rate compared with JPEG2000 algorithm. With the bandwidth restriction in airborne Synthetic Aperture Radar (SAR)-based human-in-the-loop applications, the acquired SAR images should be compressed with loss to overcome the conflict of image quantity and the response time. In this letter a framework of SAR image compression is described. The SAR image is decomposed into two components, namely structural and textural components. The target region mask is used to retain the important target information by allocating more bits during compression, while less bits is allocated for the background region. The obtained results show that the compressed image using the proposed algorithm has better visual effect under the same bit rate compared with JPEG2000 algorithm.
出处 《Journal of Electronics(China)》 2008年第3期401-404,共4页 电子科学学刊(英文版)
关键词 Image decomposition WAVELET Target recognition Total variation 带宽 雷达 传输模式 图象处理
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参考文献10

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