This research presents a multi-domain solution that uses text and images to iteratively improve automated information extraction. Stage I uses local text surrounding an embedded image to provide clues that help rank-order possible image annotations. These annotations are forwarded to Stage II, where the image annotations from Stage I are used as highly-relevant super-words to improve extraction of topics. The model probabilities from the super-words in Stage II are forwarded to Stage III where they are used to refine the automated image annotation developed in Stage I. All stages demonstrate improvement over existing equivalent algorithms in the literature
In an ever-increasing data rich environment, actionable information must be extracted, filtered, and...
Image annotations allow users to access a large image database with textual queries. There have been...
We experiment with an automated topic extraction algorithm based on a generative graphical model. La...
Abstract — Modern image retrieval systems, which allow users to use textual queries and perform cont...
Topic modeling based on latent Dirichlet allocation (LDA) has been a framework of choice to deal wit...
Topic modeling based on latent Dirichlet allocation (LDA) has been a framework of choice to perform ...
In this thesis, we investigate several extensions of the basic Latent Dirichlet Allocation model for...
We propose a new framework for automatic image annotation through multi-topic text categorization. G...
Topic uncovering of the latent topics have become an active research area for more than a decade and...
Natural Language Processing is a complex method of data mining the vast trove of documents created a...
Topic modeling based on latent Dirichlet allocation (LDA) has been a framework of choice to deal wit...
MasterIn our new model named Supervised Bi-Latent Dirichlet Allocation(pSB-LDA), we explore the valu...
We explore the use a Latent Dirichlet Allocation (LDA) imitating pseudo-topic-model, based on our or...
Image annotation is a promising approach to bridging the semantic gap between low-level features and...
The development of technology generates huge amounts of non-textual information, such as images. An ...
In an ever-increasing data rich environment, actionable information must be extracted, filtered, and...
Image annotations allow users to access a large image database with textual queries. There have been...
We experiment with an automated topic extraction algorithm based on a generative graphical model. La...
Abstract — Modern image retrieval systems, which allow users to use textual queries and perform cont...
Topic modeling based on latent Dirichlet allocation (LDA) has been a framework of choice to deal wit...
Topic modeling based on latent Dirichlet allocation (LDA) has been a framework of choice to perform ...
In this thesis, we investigate several extensions of the basic Latent Dirichlet Allocation model for...
We propose a new framework for automatic image annotation through multi-topic text categorization. G...
Topic uncovering of the latent topics have become an active research area for more than a decade and...
Natural Language Processing is a complex method of data mining the vast trove of documents created a...
Topic modeling based on latent Dirichlet allocation (LDA) has been a framework of choice to deal wit...
MasterIn our new model named Supervised Bi-Latent Dirichlet Allocation(pSB-LDA), we explore the valu...
We explore the use a Latent Dirichlet Allocation (LDA) imitating pseudo-topic-model, based on our or...
Image annotation is a promising approach to bridging the semantic gap between low-level features and...
The development of technology generates huge amounts of non-textual information, such as images. An ...
In an ever-increasing data rich environment, actionable information must be extracted, filtered, and...
Image annotations allow users to access a large image database with textual queries. There have been...
We experiment with an automated topic extraction algorithm based on a generative graphical model. La...