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On relevance feedback and similarity measure for image retrieval with synergetic neural nets

机译:协同神经网络图像检索的相关反馈和相似度量

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In image retrieval, research issues relating to the design of a similarity function, which corresponds to human perception, remain open. Here we exploit a new interpretation of the control parameter, order vector, used in synergetic neural net (SNN) and use it as the basis of a sim-ilarity function for shape-based retrieval. More specifically, we have proven certain properties and theorems which give a formal basis for SNN based image retrieval. Based on the properties, an efficient affine invariant similarity measure has been developed for trademark images. Furthermore, we propose a self-attentive retrieval and relevance feedback mechanism for similarity measure refinement. Experiments also demonstrated that the proposed similarity measure is able to reflect the user's view of similarity through relevance feedback which in turn reinforces the retrieval ranking.
机译:在图像检索中,与人类感知相对应的与相似度函数设计有关的研究问题仍然悬而未决。在这里,我们利用在协同神经网络(SNN)中使用的控制参数阶数向量的新解释,并将其用作基于形状的检索相似函数的基础。更具体地说,我们已经证明了某些特性和定理,这些特性和定理为基于SNN的图像检索提供了形式基础。基于这些特性,已经为商标图像开发了有效的仿射不变性相似性度量。此外,我们提出了一种自我关注的检索和相关性反馈机制,用于相似性度量的细化。实验还证明,所提出的相似性度量能够通过相关性反馈反映用户的相似性观点,从而增强了检索排名。

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