In multipoint query learning a number of query representatives are selected based on the positive feedback samples. The similarity score to a multipoint query is obtained from merging the individual scores. In this paper, we investigate three different combination strategies and present a comparative evaluation of their performance. Results show that the performance of multipoint queries relies heavily on the right choice of settings for the fusion. Unlike previous results, suggesting that multipoint queries generally perform better than a single query representation, our evaluation results do not allow such an overall conclusion. Instead our study points to the type of queries for which query expansion is better suited than a single query,...
International audienceThis paper presents a cluster-based relevance feedback method, which combines ...
Despite the efforts to reduce the semantic gap between user perception of similarity and feature-bas...
Conventional approaches to image retrieval are based on the assumption that relevant images are phys...
It has been known that using different representations of a query retrieves different sets of docume...
It has been known that using di’erent repre-sentations of a query retrieves different sets of docume...
Traditional content-based image retrieval (CBIR) systems find relevant images close to an example im...
Traditional content-based image retrieval (CBIR) systems find relevant images close to an example im...
The paper reports on experimental results obtained from a performance comparison of feature combinat...
Browse Conference Publications > Image Analysis and Processing ... Comparison and combination of...
International audienceWe show how web image search can be improved by taking into account the users ...
Users often have very specific visual content in mind that they are searching for. The most natural ...
This paper considers the strategies of query expansion, relevance feedback and result fusion to incr...
In previous work, we developed a novel Relevance Feedback (RF) framework that learns One-class Suppo...
International audienceRecent years have witnessed a growing interest towards learning distributed qu...
While many systems are currently available supporting the query-by-example paradigm for image retrie...
International audienceThis paper presents a cluster-based relevance feedback method, which combines ...
Despite the efforts to reduce the semantic gap between user perception of similarity and feature-bas...
Conventional approaches to image retrieval are based on the assumption that relevant images are phys...
It has been known that using different representations of a query retrieves different sets of docume...
It has been known that using di’erent repre-sentations of a query retrieves different sets of docume...
Traditional content-based image retrieval (CBIR) systems find relevant images close to an example im...
Traditional content-based image retrieval (CBIR) systems find relevant images close to an example im...
The paper reports on experimental results obtained from a performance comparison of feature combinat...
Browse Conference Publications > Image Analysis and Processing ... Comparison and combination of...
International audienceWe show how web image search can be improved by taking into account the users ...
Users often have very specific visual content in mind that they are searching for. The most natural ...
This paper considers the strategies of query expansion, relevance feedback and result fusion to incr...
In previous work, we developed a novel Relevance Feedback (RF) framework that learns One-class Suppo...
International audienceRecent years have witnessed a growing interest towards learning distributed qu...
While many systems are currently available supporting the query-by-example paradigm for image retrie...
International audienceThis paper presents a cluster-based relevance feedback method, which combines ...
Despite the efforts to reduce the semantic gap between user perception of similarity and feature-bas...
Conventional approaches to image retrieval are based on the assumption that relevant images are phys...