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Fast semantic scene segmentation with conditional random field
2010
2010 IEEE International Conference on Image Processing
In this paper, we present a fast approach to obtain semantic scene segmentation with high precision. We employ a two-stage classifier to label all image pixels. First, we use the regularized logistic regression to combine different appearance-based features and the improved spatial layout of labeling information. In the second stage, we incorporate the local, regional and global cues into a conditional random field model to provide a final segmentation, and a fast max-margin training method is
doi:10.1109/icip.2010.5652023
dblp:conf/icip/YangDTXH10
fatcat:wxolu62st5hmdpe3j2g3l6mbzy