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Visual Image Search: Feature Signatures or/and Global Descriptors

机译:视觉图像搜索:功能签名或/和全局描述符

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The success of content-based retrieval systems stands or falls with the quality of the utilized similarity model. In the case of having no additional keywords or annotations provided with the multimedia data, the hard task is to guarantee the highest possible retrieval precision using only content-based retrieval techniques. In this paper we push the visual image search a step further by testing effective combination of two orthogonal approaches - the MPEG-7 global visual descriptors and the feature signatures equipped by the Signature Quadratic Form Distance. We investigate various ways of descriptor combinations and evaluate the overall effectiveness of the search on three different image collections. Moreover, we introduce a new image collection, TWIC, designed as a larger realistic image collection providing ground truth. In all the experiments, the combination of descriptors proved its superior performance on all tested collections. Furthermore, we propose a re-ranking variant guaranteeing efficient yet effective image retrieval.
机译:基于内容的检索系统的成功取决于所使用的相似性模型的质量。在不为多媒体数据提供附加关键字或注释的情况下,艰巨的任务是仅使用基于内容的检索技术来保证最高的检索精度。在本文中,我们通过测试两种正交方法(MPEG-7全局视觉描述符和签名二次形距离所提供的特征签名)的有效组合,将视觉图像搜索进一步推进了一步。我们研究了描述符组合的各种方式,并评估了三个不同图像集合的整体搜索效果。此外,我们引入了一个新的图像集TWIC,该图像集被设计为更大的逼真的图像集,提供了真实的事实。在所有实验中,描述符的组合在所有测试的集合中证明了其优越的性能。此外,我们提出了一种重新排序的变体,以确保有效而有效的图像检索。

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