基于压缩感知的SAR图像鲁棒编码传输
Robust coding transmission for SAR image based on compressive sensing
- 2014年19卷第11期 页码:1649-1656
网络出版:2014-11-01,
纸质出版:2014
DOI: 10.11834/jig.20141113
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网络出版:2014-11-01,
纸质出版:2014
移动端阅览
尽管传统的联合信源信道编码方案可以获得高效的压缩性能
但当信道恶化超过信道编码的纠错能力时会导致解码端重构性能的急剧下降;为此利用压缩感知的民主性提出一种鲁棒的SAR图像编码传输方案
且采用了一系列方法提高该方案的率失真性能。 考虑到SAR图像丰富的边缘信息
采用具有更强方向表示能力的方向提升小波变换(DLWT)对SAR图像进行稀疏表示
且为消除压缩感知中恢复非稀疏信号时存在的混叠效应
采用了稀疏滤波方法保证大系数的精确恢复
在解码端采用了高效的Bayesian重建算法获得图像的高性能重建。 在同等码率下
与传统的联合信源信道编码方案CCSDS-RS相比
本文方案可以实现更加鲁棒的编码传输
当丢包率达到0.05时
本文方案DSFB-CS获得的重建性能明显要高于CCSDS-RS;与基于Bayesian重建算法TSW-CS的传统方案相比
本文方案可提高峰值信噪比(PSNR)3.9 dB。 本文方案DSFB-CS 实现了SAR图像的鲁棒传输
随着丢包率的上升
DSFB-CS获得的重建性能缓慢下降
保证了面对不稳定信道时
解码端可以获得相对稳定的重构图像。
Consider a wireless communication system with a radio station in an airborne synthetic aperture radar (SAR) system operating in a time-varying channel. Unpredictable packet loss occurs during transmission. Therefore
building a robust and efficient SAR image coding transmission scheme is necessary. Although traditional joint source-channel coding (JSCC) can achieve excellent and efficient transmission performance under fixed channel conditions
the predetermined redundancy of channel coding was adopted to achieve robustness. However
when the deterioration of channel condition exceeds the correction capacity of the channel codec in a time-varying channel
reconstruction performance declines at the decoder. In this work
we propose a robust SAR image coding transmission scheme over a time-varying channel using the democracy of compressive sensing (CS). A range of methods to improve the rate-distortion performance of the proposed scheme are also adopted. The reconstruction performance depends only on the number of measurements received and not on the actual measurements received; that is
every measurement is independent and nearly equal. Given the rich edge information of an SAR image
directional lifting wavelet transform (DLWT) is adopted as sparse representation to improve the representation of the edges of the SAR image. Although DLWT can attain good sparse representation for SAR images
this method cannot ensure strict sparse representation in CS; that is
representation coefficients still contain small coefficients that would interfere in the recovery of large coefficients. Thus
sparse filtering (setting small coefficients to zero) is also adopted in this study to eliminate the interference of small coefficients. Compared with the deterministic model-based CS reconstruction algorithms
the Bayesian model-based CS reconstruction algorithm is more reliable in a random signal scenario. Thus
we adopt an efficient Bayesian reconstruction algorithm called tree structured wavelet that exploits the structure dependencies of wavelet coefficients to attain high-performance image reconstruction. The proposed scheme achieves more robust SAR image coding transmission compared with the traditional JSCC scheme
CCSDS-RS
at the same rate. When the packet loss rate (PLR) reaches 0.05
the reconstruction performance of DSFB-CS is higher than that of CCSDS-RS. Therefore
CCSDS-RS is highly sensitive against packet loss and can easily lead to the cliff effect with channel deterioration. By contrast
the R-D performance in DSFB-CS decreases gracefully with channel deterioration. As the proposed scheme is based on reconstruction algorithm TSW
DSFB-CS is compared with the traditional scheme based on TSW without sparse filtering that uses DWT as sparse representation. DSFB-CS can improve the peak signal-to-noise ratio (PSNR) up to 3.9 dB. The proposed DSFB-CS achieves more robust transmission for SAR images compared with the traditional JSCC scheme
CCSDS-RS. The reconstruction performance of the proposed scheme declines slowly with the channel deterioration. Even under a time-varying channel
the robustness of DSFB-CS can still ensure that the decoder side can attain a relatively stable reconstructed image. Compared with the traditional CS scheme based on TSW
the proposed scheme exhibits significantly improved PSNR. The percentage of the reserved large coefficients in all coefficients and the bits of every measurement are both key parameters.
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