Alpha Matting with KL-Divergence Based Sparse Sampling
Journal Article
Abstract In this paper, we present a new sampling-based alpha matting approach for the accurate estimation of foreground and background layers of an image. Previous sampling-based methods typically rely on certain heuristics in collecting represen- tative samples from known regions, and thus their performance deteriorates if the underlying assumptions are not satisfied. To alleviate this, we take an entirely new approach and formulate sampling as a sparse subset selection problem where we propose to pick a small set of candidate samples that best explains the unknown pixels. Moreover, we describe a new dissimilarity measure for comparing two samples which is based on KL- divergence between the distributions of features extracted in the vicinity of the samples. The proposed framework is general and could be easily extended to video matting by additionally taking temporal information into account in the sampling process. Evaluation on standard benchmark datasets for image and video matting demonstrates that our approach provides more accurate results compared to the state-of-the-art methods.

BibTeX
@ARTICLE{7955081,
author={L. Karacan and A. Erdem and E. Erdem},
journal={IEEE Transactions on Image Processing},
title={Alpha Matting with KL-Divergence Based Sparse Sampling},
year={2017},
volume={26},
number={9},
pages={4523-4536},
keywords={Feature extraction;Image color analysis;Image segmentation;Laplace equations;Robustness;Three-dimensional displays;Image Matting;KL-Divergence;Video Matting},
doi={10.1109/TIP.2017.2718664},
ISSN={1057-7149},
month={September},}