This paper describes the application of techniques derived from text retrieval research to the content-based querying of image databases. Specifically, the use of inverted files, frequency-based weights and relevance feedback are investigated. The use of inverted files allows very large numbers ($\geq \mathcal{O}(104)$) of possible features to be used. since search is limited to the subspace spanned by the features present in the query image(s). A variety of weighting schemes used in text retrieval are employed, yielding different results. We suggest possibles modifications for their use with image databases. The use of relevance feedback was shown to improve the query results significantly, as measured by precision and recall, for all user...
In this paper, we present a novel relevance feedback method for Content-Based Image Retrieval system...
Abstract. This paper presents a new approach to the problem of fea-ture weighting for content based ...
Abstract. We investigate models for content-based image retrieval with relevance feedback, in partic...
This paper describes the application of techniques derived from text retrieval research to the conte...
In this paper we report the application of techniques inspired by text retrieval research to the con...
In this paper we report the application of techniques inspired by text retrieval research to the con...
In this paper we report the application of techniques inspired by text retrieval research to the con...
Content-based query of image databases, inspirations from text retrieval: inverted files, frequency-...
Content-based query of image databases, inspirations from text retrieval: inverted files, frequency-...
This paper reports the application of techniques inspired by text retrieval research to content-base...
In this paper we describe the current state of the art in relevance feedback as seen from a content-...
Content-based image retrieval has become one of the most active research areas in the past few year...
Despite the efforts to reduce the semantic gap between user perception of similarity and feature-bas...
Despite the efforts to reduce the semantic gap between user perception of similarity and feature-bas...
We introduce a novel relevance feedback method for content-based image retrieval and demonstrate its...
In this paper, we present a novel relevance feedback method for Content-Based Image Retrieval system...
Abstract. This paper presents a new approach to the problem of fea-ture weighting for content based ...
Abstract. We investigate models for content-based image retrieval with relevance feedback, in partic...
This paper describes the application of techniques derived from text retrieval research to the conte...
In this paper we report the application of techniques inspired by text retrieval research to the con...
In this paper we report the application of techniques inspired by text retrieval research to the con...
In this paper we report the application of techniques inspired by text retrieval research to the con...
Content-based query of image databases, inspirations from text retrieval: inverted files, frequency-...
Content-based query of image databases, inspirations from text retrieval: inverted files, frequency-...
This paper reports the application of techniques inspired by text retrieval research to content-base...
In this paper we describe the current state of the art in relevance feedback as seen from a content-...
Content-based image retrieval has become one of the most active research areas in the past few year...
Despite the efforts to reduce the semantic gap between user perception of similarity and feature-bas...
Despite the efforts to reduce the semantic gap between user perception of similarity and feature-bas...
We introduce a novel relevance feedback method for content-based image retrieval and demonstrate its...
In this paper, we present a novel relevance feedback method for Content-Based Image Retrieval system...
Abstract. This paper presents a new approach to the problem of fea-ture weighting for content based ...
Abstract. We investigate models for content-based image retrieval with relevance feedback, in partic...