A Semantic Typicality Measure for Natural Scene Categorization
Julia Vogel and Bernt Schiele
In: Pattern Recognition Sypmposium DAGM 2004, Tubingen, Germany, September
2004. [pdf]
Abstract: We propose an approach to categorize real-world natural
scenes based on a semantic typicality measure. The proposed typicality measure
allows to grade the similarity of an image with respect to a scene category. We
argue that such a graded decision is appropriate and justified both from a
human's perspective as well as from the image-content point of view. The method
combines bottom-up information of local semantic concepts with the typical
semantic content of an image category. Using this learned category
representation the proposed typicality measure also quantifies the semantic
transitions between image categories such as coasts, rivers/lakes, forest,
plains, mountains or sky/clouds. The method is evaluated quantitatively and
qualitatively on a database of natural scenes. The experiments show that the
typicality measure well represents the diversity of the given image categories
as well as the ambiguity in human judgment of image categorization.
Bibtex Record
@inproceedings{vogel04a,
author = {Julia Vogel and Bernt Schiele},
title = {A Semantic Typicality Measure for
Natural Scene Categorization},
booktitle = {Pattern Recognition Symposium DAGM'04},
month = {September},
year = 2004,
address = {T\"ubingen, Germany},
}
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