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An efficient weakly supervised approach for texture segmentation via graph cuts
Date Issued
01-12-2013
Author(s)
Bhavsar, Arnav V.
Abstract
We propose an approach for texture segmentation based on weak supervised learning. The weak supervision implies that the user marks only a single small patch for each class in the input image. These patches are used for training. We employ the method of graph cuts for the segmentation task. Our work demonstrates that even under such weak training, texture segmentation can be achieved efficiently and with good accuracy via graph cuts. Moreover, our approach uses a simpler feature representation than that in similar contemporary segmentation approaches. We also provide a brief discussion indicating the good performance of our approach. We validate our method on various standard texture mosaics and also on segmentation of natural images with large texture variations. © 2013 by Walter de Gruyter Berlin Boston.
Volume
22