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中国物理学会期刊

基于卷积高斯混合模型的统计压缩感知

CSTR: 32037.14.aps.68.20190414

Statistical compressive sensing based on convolutional Gaussian mixture model

CSTR: 32037.14.aps.68.20190414
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  • 高斯混合模型被广泛应用于统计压缩感知中信号先验概率分布的建模. 利用高斯混合模型对图像的概率分布进行建模时, 通常需要先对图像分块, 再对图像块的概率分布进行建模. 本文提出卷积高斯混合模型对整幅图像的概率分布进行建模. 通过期望极大化算法求解极大边缘似然估计, 实现模型中未知参数的估计. 此外, 考虑到在整幅图像上计算的复杂度较高, 本文在卷积高斯混合模型和压缩测量模型中引入循环卷积, 所有的训练和恢复过程都可以利用二维快速傅里叶变换实现快速运算. 仿真实验表明, 本文所提的MMLE-convGMM算法的恢复性能要优于传统的压缩感知算法的恢复性能.

     

    Statistical compressive sensing needs to use the statistical description of source signal. By decomposing a whole image into a set of non-overlapping or overlapping patches, the Gaussian mixture model (GMM) has been used to statistically represent patches in an image. Compressive sensing, however, always imposes compression on the whole image. It is obvious that the entire image contains much richer information than the small patches. Extending from the small divided patches to an entire image, we propose a convolutional Gaussian mixture model (convGMM) to depict the statistics of an entire image and apply it to compressive sensing. We present the algorithm details by learning a convGMM from training images based on maximizing the marginal log-likelihood estimation. The learned convGMM is used to perform the model-based compressive sensing by using the convGMM as a model of the underlying image. In addition, aiming at the problem of high-dimensional image that makes learning, estimation and optimization suffer high computational complexity, all of the training and reconstruction process in our method can be fast and efficiently calculated in the frequency-domain by two-dimensional fast Fourier transforms. The performance of the convGMM on compressive sensing is demonstrated on several image sets.

     

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