Publications

Stats

View publication

Title Automatic Image Tagging Through Information Propagation in a Query Log Graph Based Structure
Authors Teresa Bracamonte, Bárbara Poblete
Publication date 2011
Abstract Annotating or tagging multimedia objects is an important task for
enhancing multimedia information retrieval processes. In the context
of the Web, automatic tagging deals with many issues, such as
loosely tagged images and huge collections of images with no textual
data at all. Recently, graph representations have been shown useful
for modeling relationships between images and their associated
semantics. Using these types of graphs, it is possible to represent
images and their textual labels as nodes, and the relationship
between them as edges, under the assumption that visual similarity
implies semantic similarity. In this work, we present an algorithm
for automatic tag propagation in such a graph structure, called the
visual-semantic graph. This graph has been used in prior work only
for the task of image retrieval re-ranking. The goal of our work, is
to show how the visual-semantic graph can be used for efficient tag
propagation to unlabeled images. More specifically, our
contributions are: (1) An algorithm to propagate tags automatically
based on the breadth-first traversal and (2) A set of heuristics for
pruning this approach for large size collections.
Downloaded 12 times
Pages 1201-1204
Conference name ACM Multimedia Conference
Publisher ACM Press (New York, NY, USA)
PDF View PDF