首页> 外文会议>2015 IEEE China Summit amp; International Conference on Signal and Information Processing >Exploiting wavelet-domain intra-scale and inter-scale dependencies in Bayesian compressive sensing with context modeling
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Exploiting wavelet-domain intra-scale and inter-scale dependencies in Bayesian compressive sensing with context modeling

机译:利用上下文建模在贝叶斯压缩感知中利用小波域尺度内和尺度间相关性

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We propose a novel Bayesian compressive sensing reconstruction algorithm based on the context modeling of intra-scale wavelet coefficients, which utilizes the statistical dependencies in different directions. We assume that the wavelet coefficients obey a spike-and-slab probability model, whose parameters can be estimated according to a novel context-based model. In the context-based model, 3×3, 5×5 and 7×7 neighboring blocks are classified into 3 classes, 4 classes and 4 classes respectively. By determining the significance state of each class and parent coefficient, we estimate the significance probability of the current coefficient. Based on the above new wavelet coefficients' prior probability model, we propose the corresponding Bayesian compressive sensing reconstruction algorithm by using Markov Chain Monte Carlo (MCMC) method. Experimental results show that compared with the tree-structured wavelet compressive sensing (TSW-CS) which only uses the interscale dependencies, the proposed algorithm improves the peak-signal-to-noise-ratio (PSNR) up to nearly 2dB at the sampling rate of 0.9.
机译:我们基于尺度内小波系数的上下文建模,提出了一种新颖的贝叶斯压缩感知重建算法,该算法利用了不同方向的统计依赖性。我们假设小波系数服从尖峰概率模型,其参数可以根据新型的基于上下文的模型进行估计。在基于上下文的模型中,将3×3、5×5和7×7的相邻块分别分为3类,4类和4类。通过确定每个类别和父系数的显着性状态,我们可以估算当前系数的显着性概率。在上述新的小波系数先验概率模型的基础上,提出了相应的贝叶斯压缩感知重构算法,采用马尔可夫链蒙特卡罗方法。实验结果表明,与仅使用尺度间相关性的树状小波压缩感知(TSW-CS)相比,该算法在采样速率下将峰值信噪比(PSNR)提高了近2dB。 0.9。

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