Image and Video Analysis

Research






This page has not been maintained since 2008.
For a current homepage of Phivos Mylonas please visit: http://image.ntua.gr/~fmylonas





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State of the art data mining and image retrieval in community photo collections typically focus on popular subsets, e.g. images containing landmarks or associated to Wikipedia articles. We propose an image clustering scheme that, seen as vector quantization, compresses a large corpus of images by grouping visually consistent ones while providing a guaranteed distortion bound. This allows us, for instance, to represent the visual content of all thousands of images depicting the Parthenon in just a few dozens of scene maps and still be able to retrieve any single, isolated, non-landmark image like a house or a graffiti on a wall.

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The idea behind the use of visual context information responds to the fact that not all human acts are relevant in all situations and this holds also when dealing with image analysis problems. Since visual context is a difficult notion to grasp and capture, in our research work we restrict it to the notion of ontological context. The latter is defined as part of a "fuzzified" version of traditional ontologies. Typical problems to be addressed include how to meaningfully readjust the membership degrees of image regions and how to use visual context to influence the overall results of knowledge-assisted image analysis towards higher performance.