Sciweavers

ICPR
2004
IEEE

Image Segmentation Through Energy Minimization Based Subspace Fusion

15 years 18 days ago
Image Segmentation Through Energy Minimization Based Subspace Fusion
In this paper we present an image segmentation technique that fuses contributions from multiple feature subspaces using an energy minimization approach. For each subspace, we compute a per-pixel quality measure and perform a partitioning through the standard normalized cut algorithm [12]. To fuse the subspaces into a final segmentation, we compute a subspace label for every pixel. The labeling is computed through the graph-cut energy minimization framework proposed by [3]. Finally, we combine the initial subspace segmentation with the subspace labels obtained from the energy minimization to yield the final segmentation. We have implemented the algorithm and provide results for both synthetic and real images.
Jason J. Corso, Maneesh Dewan, Gregory D. Hager
Added 09 Nov 2009
Updated 09 Nov 2009
Type Conference
Year 2004
Where ICPR
Authors Jason J. Corso, Maneesh Dewan, Gregory D. Hager
Comments (0)