This paper describes a two-stage statistical approach supporting content-based search in image databases. The first stage performs correspondence analysis, a factor analysis method transforming image attributes into a reduced-size, uncorrelated factor space. The second stage performs ascendant heirarchical classification, an iterative clustering method which constructs a heirarchical index structure for the images of the database. Experimental results supporting the applicability of both techniques to data sets of heterogeneous images are reported
This report provides an empirical study on content-based image indexing and retrieval. The report be...
Progress in Content-Based Image Retrieval (CBIR) is hampered by the absence of well-documented and v...
This paper describes the application of techniques derived from text retrieval research to the conte...
This paper describes a two-stage statistical approach supporting content-based search in image datab...
This letter presents a two-stage statistical approach for ``exploring and explaining'' a pictorial d...
International audienceIn this paper, we investigate the intensive use of Correspondence Analysis (CA...
International audienceWe are concerned by the use of Factorial Correspondence Analysis (FCA) for ima...
We are concerned by the use of Factorial Correspondence Analysis (FCA) for image retrieval. FCA is d...
This thesis deals with the problem of £nding images that contain a given query sub-image, the so-cal...
In this paper, we present a methodology on how to measure the visual similarity between a query imag...
Abstract—We are concerned by the use of Factorial Correspondence Analysis (FCA) for image retrieval....
[[abstract]]Content-based image retrieval has become more desirable for developing large image datab...
In recent years, there has been a growing interest in developing effective methods for searching lar...
This paper presents a new approach to content-based image retrieval by addressing three primary issu...
Conference on Storage and Retrieval Methods and Applications for Multimedia 2004, San Jose, U.S.A., ...
This report provides an empirical study on content-based image indexing and retrieval. The report be...
Progress in Content-Based Image Retrieval (CBIR) is hampered by the absence of well-documented and v...
This paper describes the application of techniques derived from text retrieval research to the conte...
This paper describes a two-stage statistical approach supporting content-based search in image datab...
This letter presents a two-stage statistical approach for ``exploring and explaining'' a pictorial d...
International audienceIn this paper, we investigate the intensive use of Correspondence Analysis (CA...
International audienceWe are concerned by the use of Factorial Correspondence Analysis (FCA) for ima...
We are concerned by the use of Factorial Correspondence Analysis (FCA) for image retrieval. FCA is d...
This thesis deals with the problem of £nding images that contain a given query sub-image, the so-cal...
In this paper, we present a methodology on how to measure the visual similarity between a query imag...
Abstract—We are concerned by the use of Factorial Correspondence Analysis (FCA) for image retrieval....
[[abstract]]Content-based image retrieval has become more desirable for developing large image datab...
In recent years, there has been a growing interest in developing effective methods for searching lar...
This paper presents a new approach to content-based image retrieval by addressing three primary issu...
Conference on Storage and Retrieval Methods and Applications for Multimedia 2004, San Jose, U.S.A., ...
This report provides an empirical study on content-based image indexing and retrieval. The report be...
Progress in Content-Based Image Retrieval (CBIR) is hampered by the absence of well-documented and v...
This paper describes the application of techniques derived from text retrieval research to the conte...