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Using Relevance Feedback to Bridge the Semantic Gap

机译:使用相关反馈弥合语义鸿沟

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摘要

In this article relevant developments in relevance feedback based image annotation and retrieval are reported. A new approach to infer semantic concepts representing meaningful objects in images is also described. The proposed technique combines user relevance feedback and underlying low-level properties of elementary building blocks making up semantic objects in images. Images are regarded as mosaics made of small building blocks featuring good representations of colour, texture and edgeness. The approach is based on accurate classification of these building blocks. Once this has been achieved, a signature for the object of concern is built. It is expected that this signature features a high discrimination power and consequently it becomes very suitable to find other images containing the same semantic object. The model combines fuzzy clustering and relevance feedback in the training stage, and uses fuzzy support vector machines in the generalization stage.
机译:本文报道了基于相关反馈的图像标注和检索的相关进展。还介绍了一种推断语义概念的新方法,这些语义概念表示图像中的有意义的对象。所提出的技术结合了用户相关性反馈和构成图像中语义对象的基本构造块的底层低级属性。图像被认为是由小块砌成的马赛克,具有很好的颜色,纹理和边缘感。该方法基于这些构建基块的准确分类。一旦做到这一点,就为关注对象建立签名。期望该签名具有较高的辨别力,因此非常适合查找包含相同语义对象的其他图像。该模型在训练阶段将模糊聚类和相关反馈结合在一起,并在推广阶段使用模糊支持向量机。

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