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Preserving modes and messages via diverse particle selection

Conference Paper
Publication Date:
2014
abstract:
In applications of graphical models arising in domains such as computer vision and signal pro-cessing, we often seek the most likely configurations of high-dimensional, continuous variables. We develop a particle-based max-product algorithm which maintains a diverse set of posterior mode hypotheses, and is robust to initialization. At each iteration, the set of hypotheses at each node is augmented via stochastic proposals, and then reduced via an efficient selection algorithm. The integer program underlying our optimization-based particle selection minimizes errors in subsequent max-product message updates. This objective automatically encourages diversity in the maintained hypotheses, without requiring tuning of application-specific distances among hypotheses. By avoiding the stochastic resampling steps underlying particle sum-product algorithms, we also avoid common degeneracies where particles collapse onto a single hypothesis. Our approach significantly out-performs previous particle-based algorithms in experiments focusing on the estimation of human pose from single images.
Iris type:
04.01 Contributo in Atti di convegno
List of contributors:
Zuffi, Silvia
Authors of the University:
ZUFFI SILVIA
Handle:
https://iris.cnr.it/handle/20.500.14243/295983
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