Retrieval of high-dimensional visual data: current state, trends and challenges ahead

被引:0
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作者
Antonio Foncubierta-Rodríguez
Henning Müller
Adrien Depeursinge
机构
[1] University of Applied Sciences Western Switzerland (HES–SO),
来源
关键词
3-dimensional objects; Visual information retrieval; 3D retrieval; 4D retrieval; High-dimensional objects;
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摘要
Information retrieval algorithms have changed the way we manage and use various data sources, such as images, music or multimedia collections. First, free text information of documents from varying sources became accessible in addition to structured data in databases, initially for exact search and then for more probabilistic models. Novel approaches enable content-based visual search of images using computerized image analysis making visual image content searchable without requiring high quality manual annotations. Other multimedia data followed such as video and music retrieval, sometimes based on techniques such as extracting objects and classifying genre. 3D (surface) objects and solid textures have also been produced in quickly increasing quantities, for example in medical tomographic imaging. For these two types of 3D information sources, systems have become available to characterize the objects or textures and search for similar visual content in large databases. With 3D moving sequences (i.e., 4D), in particular medical imaging, even higher-dimensional data have become available for analysis and retrieval and currently present many multimedia retrieval challenges.
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页码:539 / 567
页数:28
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