Publication | Closed Access
Patch-Based Video Processing: A Variational Bayesian Approach
52
Citations
77
References
2008
Year
EngineeringMachine LearningVideo ProcessingBayesian FrameworkPatch-based Video ProcessingImage AnalysisNearest Neighbor SearchData SciencePatch ClusteringPattern RecognitionFilter (Video)Video Content AnalysisVideo RestorationMachine VisionInverse ProblemsComputer ScienceComputer VisionVideo DenoisingVideo Hallucination
In this paper, we present a patch-based variational Bayesian framework for video processing and demonstrate its potential in denoising, inpainting and deinterlacing. Unlike previous methods based on explicit motion estimation, we propose to embed motion-related information into the relationship among video patches and develop a nonlocal sparsity-based prior for typical video sequences. Specifically, we first extend block matching (nearest neighbor search) into patch clustering (k-nearest-neighbor search), which represents motion in an implicit and distributed fashion. Then we show how to exploit the sparsity constraint by sorting and packing similar patches, which can be better understood from a manifold perspective. Under the Bayesian framework, we treat both patch clustering result and unobservable data as latent variables and solve the inference problem via variational EM algorithms. A weighted averaging strategy of fusing diverse inference results from overlapped patches is also developed. The effectiveness of patch-based video models is demonstrated by extensive experimental results on a wide range of video materials.
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