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Image feature ratio model: similarity measures with both semantic and visual features in interactive image retrieval

机译:图像特征比模型:交互式图像检索中的语义和视觉功能的相似度措施

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The feature contrast model (FCM), which is the simplest form of the matching function in Tversky's set-theoretic similarity, is a famous similarity model in psychological society. Although FCM can be employed to explain the similarity with both semantic and perceptual features, it is very difficult for FCM to measure natural image similarity with semantic features because of the requirement that all features must be binary and the complex mechanism that semantic features are transformed into binary features. The fuzzy feature contrast model (FFCM) is an extension of FCM, which replaces the complex feature representation mechanism with a proper fuzzy membership function. By this fuzzy logic, visual features, in the FFCM, can be represented as multidimensional points instead of expansible feature set and used to measure visual similarity between two images. Based on the analysis of the distinction between two feature structures (i.e., the expansible feature set and multidimensional vector), we propose a ratio model, which expresses similarity between two images as a ratio of the measures of semantic features set to that of multidimensional visual features. Experiments results, over real-world image collections, show that our model addresses the distinction between semantic and visual feature structures to some extension. In particular, our model is suit for the case that semantic features are implicitly obtained from interaction with users and the visual features are transparent for users, for example, the relevance feedback in interactive image retrieval.
机译:特征对比模型(FCM)是TVERSKY的定理相似性匹配功能的最简单形式,是心理社会中着名的相似模型。虽然可以使用FCM来解释与语义和感知功能的相似性,但FCM非常困难,因为要求所有功能必须是二进制的要求和语义特征被转换为的复杂机制,非常困难二进制特征。模糊特性的对比模型(FFCM)是FCM,它取代有适当的模糊隶属函数的复杂特征表示机制的扩展。通过这种模糊逻辑,在FFCM中的视觉功能可以表示为多维点而不是可扩展功能集,并用于测量两个图像之间的视觉相似性。基于分析两个特征结构的区别(即,可扩展特征集和多维向量),我们提出了一个比率模型,它表达了两个图像之间的相似性,作为对多维视觉的语义特征的测量值的比率特征。实验结果,通过现实世界的图像集合,表明我们的模型解决了语义和视觉特征结构之间的区别到一些扩展。特别地,我们的模型适用于这种情况,即从与用户的交互隐含地获得语义特征,并且视觉特征对于用户来说是透明的,例如,交互式图像检索中的相关反馈。

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