Hunting moving targets: an extension to Bayesian methods in multimedia databases MULLER, Wolfgang, et al. It has been widely recognised that the difference between the level of abstraction of the formulation of a query (by example) and that of the desired result (usually an image with certain semantics) calls for the use of learning methods that try to bridge this gap. Cox et al. have proposed a Bayesian method to learn the user's preferences during each query. Cox et al.'s system, PicHunter is designed for optimal performance when the user is searching for a fixed target image. The performance of the system was evaluated using target testing, which ranks systems according to the number of interaction steps required to find the ta...
Most of the current image retrieval systems use »one-shot» queries to a database to retrieve similar...
We take the benefit of improvements in optical devices for multimedia data storage, jointly with dev...
We propose a new Bayesian approach to object-based image retrieval with relevance feedback. Although...
It has been widely recognised that the difference between the level of abstraction of the formulatio...
multimedia databases MULLER, Wolfgang, et al. It has been widely recognised that the difference betw...
A new algorithm and systematic evaluation is presented for searching a database via relevance feedba...
A new algorithm and systematic evaluation is presented for searching a database via relevance feedba...
A new algorithm and systematic evaluation is presented for searching a database via relevance feedba...
We formulate the problem of retrieving images from visual databases as a problem of Bayesian inferen...
Despite the efforts to reduce the so-called semantic gap between the user’s perception of image simi...
Despite the efforts to reduce the so-called semantic gap between the user’s perception of image simi...
Unlike laboratory experiments, real-world visual search can contain multiple targets. Searching for ...
Despite the efforts to reduce the so-called semantic gap between the user's perception of image simi...
Searching for images from a large collection is a difficult task for automated algorithms. Many curr...
[[abstract]]This paper presents a generalized Bayesian framework for relevance feedback in content-b...
Most of the current image retrieval systems use »one-shot» queries to a database to retrieve similar...
We take the benefit of improvements in optical devices for multimedia data storage, jointly with dev...
We propose a new Bayesian approach to object-based image retrieval with relevance feedback. Although...
It has been widely recognised that the difference between the level of abstraction of the formulatio...
multimedia databases MULLER, Wolfgang, et al. It has been widely recognised that the difference betw...
A new algorithm and systematic evaluation is presented for searching a database via relevance feedba...
A new algorithm and systematic evaluation is presented for searching a database via relevance feedba...
A new algorithm and systematic evaluation is presented for searching a database via relevance feedba...
We formulate the problem of retrieving images from visual databases as a problem of Bayesian inferen...
Despite the efforts to reduce the so-called semantic gap between the user’s perception of image simi...
Despite the efforts to reduce the so-called semantic gap between the user’s perception of image simi...
Unlike laboratory experiments, real-world visual search can contain multiple targets. Searching for ...
Despite the efforts to reduce the so-called semantic gap between the user's perception of image simi...
Searching for images from a large collection is a difficult task for automated algorithms. Many curr...
[[abstract]]This paper presents a generalized Bayesian framework for relevance feedback in content-b...
Most of the current image retrieval systems use »one-shot» queries to a database to retrieve similar...
We take the benefit of improvements in optical devices for multimedia data storage, jointly with dev...
We propose a new Bayesian approach to object-based image retrieval with relevance feedback. Although...