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Semantic spaces revisited: investigating the performance of auto-annotation and semantic retrieval using semantic spaces

机译:重新审视语义空间:使用语义空间研究自动注释和语义检索的性能

摘要

Semantic spaces encode similarity relationships between objects as a function of position in a mathematical space. This paper discusses three different formulations for building semantic spaces which allow the automatic-annotation and semantic retrieval of images. The models discussed in this paper require that the image content be described in the form of a series of visual-terms, rather than as a continuous feature-vector. The paper also discusses how these term-based models compare to the latest state-of-the-art continuous feature models for auto-annotation and retrieval.
机译:语义空间将对象之间的相似关系编码为数学空间中位置的函数。本文讨论了构建语义空间的三种不同形式,这些形式允许对图像进行自动注释和语义检索。本文讨论的模型要求图像内容以一系列视觉术语的形式描述,而不是连续的特征向量。本文还讨论了如何将这些基于术语的模型与用于自动注释和检索的最新技术水平的连续特征模型进行比较。

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