Convolutional Gaussian Mixture Models with Application to Compressive Sensing

2018 IEEE Statistical Signal Processing Workshop (SSP)(2018)

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摘要
Gaussian mixture models (GMM) have been used to statistically represent patches in an image. Extending from small patches to an entire image, we propose a convolutional Gaussian mixture models (convGMM) to model the statistics of an entire image and apply it for compressive sensing (CS). We present the algorithm details for learning a convGMM from training images by maximizing the marginal log-likelihood estimation (MMLE). The learned convGMM is used to perform model-based compressive sensing, using the convGMM as a model of the underlying image. In addition, a key feature of our method is that all of the training and reconstruction process could be fast and efficient calculated in the frequency-domain by 2-dimensional fast Fourier transforms (2d-FFTs). The performance of the convGMM on CS is demonstrated on several image sets.
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关键词
Gaussian Mixture Models (GMM),Bayesian compressive sensing,convolutional sparse coding,expectation maximization (EM)
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