1. Sparse Coding for Alpha Matting.
- Author
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Johnson, Jubin, Varnousfaderani, Ehsan Shahrian, Cholakkal, Hisham, and Rajan, Deepu
- Subjects
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IMAGE compression , *COLOR image processing , *PIXELS , *IMAGE segmentation , *DIGITAL video - Abstract
Existing color sampling-based alpha matting methods use the compositing equation to estimate alpha at a pixel from the pairs of foreground ( F ) and background ( B ) samples. The quality of the matte depends on the selected ( $F,B$ ) pairs. In this paper, the matting problem is reinterpreted as a sparse coding of pixel features, wherein the sum of the codes gives the estimate of the alpha matte from a set of unpaired F and B samples. A non-parametric probabilistic segmentation provides a certainty measure on the pixel belonging to foreground or background, based on which a dictionary is formed for use in sparse coding. By removing the restriction to conform to ( $F,B$ ) pairs, this method allows for better alpha estimation from multiple F and B samples. The same framework is extended to videos, where the requirement of temporal coherence is handled effectively. Here, the dictionary is formed by samples from multiple frames. A multi-frame graph model, as opposed to a single image as for image matting, is proposed that can be solved efficiently in closed form. Quantitative and qualitative evaluations on a benchmark dataset are provided to show that the proposed method outperforms the current stateoftheart in image and video matting [ABSTRACT FROM PUBLISHER]
- Published
- 2016
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