| Literature DB >> 24466500 |
Jamshid Sourati1, Dana H Brooks1, Jennifer G Dy1, Deniz Erdogmus1.
Abstract
Constrained spectral clustering with affinity propagation in its original form is not practical for large scale problems like image segmentation. In this paper we employ novelty selection sub-sampling strategy, besides using efficient numerical eigen-decomposition methods to make this algorithm work efficiently for images. In addition, entropy-based active learning is also employed to select the queries posed to the user more wisely in an interactive image segmentation framework. We evaluate the algorithm on general and medical images to show that the segmentation results will improve using constrained clustering even if one works with a subset of pixels. Furthermore, this happens more efficiently when pixels to be labeled are selected actively.Entities:
Keywords: Constrained spectral clustering; active learning; image segmentation
Year: 2012 PMID: 24466500 PMCID: PMC3898593 DOI: 10.1109/MLSP.2012.6349765
Source DB: PubMed Journal: IEEE Int Workshop Mach Learn Signal Process