Video compressive sensing using Gaussian mixture models
IEEE Transactions on Image Processing, 2014•ieeexplore.ieee.org
A Gaussian mixture model (GMM)-based algorithm is proposed for video reconstruction from
temporally compressed video measurements. The GMM is used to model spatio-temporal
video patches, and the reconstruction can be efficiently computed based on analytic
expressions. The GMM-based inversion method benefits from online adaptive learning and
parallel computation. We demonstrate the efficacy of the proposed inversion method with
videos reconstructed from simulated compressive video measurements, and from a real …
temporally compressed video measurements. The GMM is used to model spatio-temporal
video patches, and the reconstruction can be efficiently computed based on analytic
expressions. The GMM-based inversion method benefits from online adaptive learning and
parallel computation. We demonstrate the efficacy of the proposed inversion method with
videos reconstructed from simulated compressive video measurements, and from a real …
A Gaussian mixture model (GMM)-based algorithm is proposed for video reconstruction from temporally compressed video measurements. The GMM is used to model spatio-temporal video patches, and the reconstruction can be efficiently computed based on analytic expressions. The GMM-based inversion method benefits from online adaptive learning and parallel computation. We demonstrate the efficacy of the proposed inversion method with videos reconstructed from simulated compressive video measurements, and from a real compressive video camera. We also use the GMM as a tool to investigate adaptive video compressive sensing, i.e., adaptive rate of temporal compression.
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