International audienceIn this paper we address a challenge of the problem of the dimensionality curse and the semantic gap reduction for content based image retrieval in large and heterogeneous databases. The strength of our idea resides in building an effective multidimensional indexing method based on kernel principal component analysis (KPCA) which supports efficiently similarity search of the heterogeneous vectors (color, texture, shape) and maps data vectors on a low feature space that is partitioned into regions. An efficient approach to approximate feature space regions is proposed with the corresponding upper and lower distance bounds. Finally, relevance feedback mechanism is exploited to create a flexible retrieval metric in order ...
Abstract- Content-based image retrieval (CBIR) systems have drawn interest from many researchers in ...
Abstract. The optimized distance-based access methods currently available for multidimensional index...
Relevance feedback is an attractive approach to developing flexible metrics for content-based retrie...
International audienceIn this paper we address a challenge of the problem of the dimensionality curs...
International audienceHigh-dimensional indexing methods have been proved quite useful for response t...
Abstract: The scalability of indexing techniques and image retrieval pose many problems. Indeed, the...
Many data partitioning index methods perform poorly in high dimensional space and do not support rel...
International audienceThis paper presents a new indexing method for visual features in high dimensio...
The significant growth in the volume of image data has driven the demand for efficient techniques to...
Within the scope of information retrieval, efficient similarity search in large document or multimed...
Relevance feedback has drawn intense interest from many researchers in the field of content-based im...
In content-based image retrieval (CBIR) system, one approach of image representation is to employ co...
Content-based image retrieval (CBIR) system with relevance feedback, which uses the algorithm for fe...
Many data partitioning index methods perform poorly in high dimensional space and do not support rel...
Content-based retrieval in image management systems requires indexing of image feature vectors. Mos...
Abstract- Content-based image retrieval (CBIR) systems have drawn interest from many researchers in ...
Abstract. The optimized distance-based access methods currently available for multidimensional index...
Relevance feedback is an attractive approach to developing flexible metrics for content-based retrie...
International audienceIn this paper we address a challenge of the problem of the dimensionality curs...
International audienceHigh-dimensional indexing methods have been proved quite useful for response t...
Abstract: The scalability of indexing techniques and image retrieval pose many problems. Indeed, the...
Many data partitioning index methods perform poorly in high dimensional space and do not support rel...
International audienceThis paper presents a new indexing method for visual features in high dimensio...
The significant growth in the volume of image data has driven the demand for efficient techniques to...
Within the scope of information retrieval, efficient similarity search in large document or multimed...
Relevance feedback has drawn intense interest from many researchers in the field of content-based im...
In content-based image retrieval (CBIR) system, one approach of image representation is to employ co...
Content-based image retrieval (CBIR) system with relevance feedback, which uses the algorithm for fe...
Many data partitioning index methods perform poorly in high dimensional space and do not support rel...
Content-based retrieval in image management systems requires indexing of image feature vectors. Mos...
Abstract- Content-based image retrieval (CBIR) systems have drawn interest from many researchers in ...
Abstract. The optimized distance-based access methods currently available for multidimensional index...
Relevance feedback is an attractive approach to developing flexible metrics for content-based retrie...