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首页> 外文期刊>IEEE Transactions on Signal Processing >Model-Based Nonuniform Compressive Sampling and Recovery of Natural Images Utilizing a Wavelet-Domain Universal Hidden Markov Model
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Model-Based Nonuniform Compressive Sampling and Recovery of Natural Images Utilizing a Wavelet-Domain Universal Hidden Markov Model

机译:基于模型的小波域通用隐马尔可夫模型对自然图像的非均匀压缩采样与恢复

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摘要

In this paper, a novel model-based compressive sampling (CS) technique for natural images is proposed. Our algorithm integrates a universal hidden Markov tree (uHMT) model, which captures the relation among the sparse wavelet coefficients of images, into both sampling and recovery steps of CS. At the sampling step, we employ the uHMT model to devise a nonuniformly sparse measurement matrix ΦuHMT. In contrast to the conventional CS sampling matrices, such as dense Gaussian, Bernoulli or uniformly sparse matrices that are oblivious to the signal model and the correlation among the signal coefficients, the proposed ΦuHMT is designed based on the signal model and samples the coarser wavelet coefficients with higher probabilities and more sparse wavelet coefficients with lower probabilities. At the recovery step, we integrate the uHMT model into two state-of-the-art Bayesian CS recovery schemes. Our simulation results confirm the superiority of our proposed HMT model-based nonuniform compressive sampling and recovery, referred to as uHMT-NCS, over other model-based CS techniques that solely consider the signal model at the recovery step. This paper is distinguished from other model-based CS schemes in that we take a novel approach to simultaneously integrating the signal model into both CS sampling and recovery steps. We show that such integration greatly increases the performance of the CS recovery, which is equivalent to reducing the required number of samples for a given reconstruction quality.
机译:本文提出了一种基于模型的自然图像压缩采样(CS)技术。我们的算法将通用的隐马尔可夫树(uHMT)模型集成到CS的采样和恢复步骤中,该模型捕获图像的稀疏小波系数之间的关系。在采样步骤中,我们采用uHMT模型来设计非均匀稀疏的测量矩阵ΦuHMT。相对于传统的CS采样矩阵(例如稠密的高斯,伯努利或均匀稀疏矩阵)而言,它们不考虑信号模型以及信号系数之间的相关性,而是基于信号模型设计了ΦuHMT,并对较粗糙的小波系数进行了采样具有较高的概率,而稀疏的小波系数具有较低的概率。在恢复步骤中,我们将uHMT模型集成到两个最新的贝叶斯CS恢复方案中。我们的仿真结果证实了我们提出的基于HMT模型的非均匀压缩采样和恢复(称为uHMT-NCS)优于仅考虑信号模型在恢复步骤的其他基于模型的CS技术。本文与其他基于模型的CS方案的区别在于,我们采用了一种新颖的方法将信号模型同时集成到CS采样和恢复步骤中。我们表明,这种集成极大地提高了CS恢复的性能,这相当于减少了给定重建质量所需的样本数量。

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