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Independent Feature Analysis for Image Retrieval

机译:图像检索的独立特征分析

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摘要

Content-based image retrieval methods based on the Euclidean metric expect the feature space to be isotropic. They suffer from unequal differential relevance of features in computing the similarity between images in the input feature space. We propose a learning method that attempts to overcome this limitation by capturing local differential relevance of features based on user feedback. This feedback, in the form of accept or reject examples generated in response to a query image, is used to locally estimate the strength of features along each dimension while taking into consideration the correlation between features. This results in local neighborhoods that are constricted along feature dimensions that are most relevant, while enlongated along less relevant ones. In addition to exploring and exploiting local principal information, the system seeks a global space for efficient independent feature analysis by combining such local information. We provide experimental results that demonstrate the efficacy of our technique using real-world data.
机译:基于欧几里德度量的基于内容的图像检索方法预计特征空间是各向同性的。它们患有在计算输入特征空间中的图像之间的相似性时特征的不等差异相关性。我们提出了一种学习方法,该方法通过基于用户反馈捕获特征的局部差异相关性来克服这种限制。在响应于查询图像生成的接受或拒绝示例的形式中,该反馈用于在考虑特征之间的相关性的同时局部估计每个维度的特征强度。这导致沿着最相关的特征尺寸收缩的本地社区,而沿着较少相关的则延伸。除了探索和利用本地主要信息之外,系统还能通过组合此类本地信息来寻求具有高效独立特征分析的全局空间。我们提供了实验结果,证明了我们使用真实世界的技术的功效。

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