Hybrid graph model for unsupervised object segmentation

Image analysis – Image segmentation

Reexamination Certificate

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C382S190000, C382S195000, C382S228000

Reexamination Certificate

active

07995841

ABSTRACT:
This disclosure describes an integrated framework for class-unsupervised object segmentation. The class-unsupervised object segmentation occurs by integrating top-down constraints and bottom-up constraints on object shapes using an algorithm in an integrated manner. The algorithm describes a relationship among object parts and superpixels. This process forms object shapes with object parts and oversegments pixel images into the superpixels, with the algorithm in conjunction with the constraints. This disclosure describes computing a mask map from a hybrid graph, segmenting the image into a foreground object and a background, and displaying the foreground object from the background.

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