| Literature DB >> 25360065 |
Lan Du1, Lu Ren2, David B Dunson1, Lawrence Carin1.
Abstract
A non-parametric Bayesian model is proposed for processing multiple images. The analysis employs image features and, when present, the words associated with accompanying annotations. The model clusters the images into classes, and each image is segmented into a set of objects, also allowing the opportunity to assign a word to each object (localized labeling). Each object is assumed to be represented as a heterogeneous mix of components, with this realized via mixture models linking image features to object types. The number of image classes, number of object types, and the characteristics of the object-feature mixture models are inferred nonparametrically. To constitute spatially contiguous objects, a new logistic stick-breaking process is developed. Inference is performed efficiently via variational Bayesian analysis, with example results presented on two image databases.Entities:
Year: 2009 PMID: 25360065 PMCID: PMC4211027
Source DB: PubMed Journal: Adv Neural Inf Process Syst ISSN: 1049-5258