RIGOR: Reusing Inference in Graph Cuts for Generating Object Regions

CVPR 2014 Ahmad HumayunFuxin LiJames M. Rehg

Popular figure-ground segmentation algorithms generate a pool of boundary-aligned segment proposals that can be used in subsequent object recognition engines. These algorithms can recover most image objects with high accuracy, but are usually computationally intensive since many graph cuts are computed with different enumerations of segment seeds... (read more)

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