Talks and Poster Presentations (with Proceedings-Entry):
A. Ion, J. Carreira, C. Sminchisescu:
"Probabilistic Joint Image Segmentation and Labeling";
Talk: NIPS 2011 Neural Information Processing Systems,
- 2011-12-17; in: "Advances in Neural Information Processing Systems 24",
Advances in Neural Information Processing Systems 24 , edited by J. Shawe-Taylor and R.S. Zemel and P. Bartlett and F. Pereira and K.Q. Weinberger (2011),
We present a joint image segmentation and labeling model (JSL) which, given a bag of ﬁgure-ground segment hypotheses extracted at multiple image locations and scales, constructs a joint probability distribution over both the compatible image interpretations (tilings or image segmentations) composed from those segments, and over their labeling into categories. The process of drawing samples from the joint distribution can be interpreted as ﬁrst sampling tilings, modeled as maximal cliques, from a graph connecting spatially non-overlapping segments in the bag , followed by sampling labels for those segments, conditioned on the choice of a particular tiling. We learn the segmentation and labeling parameters jointly, based on Maximum Likelihood with a novel Incremental Saddle Point
estimation procedure. The partition function over tilings and labelings is increasingly more accurately approximated by including incorrect conﬁgurations that a not-yet-competent model rates probable during learning. We show that the proposed methodology matches the current state of the art in the Stanford dataset , as well as in VOC2010, where 41.7% accuracy on the test set is achieved.
Created from the Publication Database of the Vienna University of Technology.