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An occupancy model for image retrieval and similarity evaluation

机译:图像检索和相似度评估的占用模型

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The analysis of visual information often involves the manipulation of enormous volumes of data. If some tolerance is allowed in the results, orders of magnitude improvement in efficiency can be achieved in such analysis by appropriate selective processing, without necessarily considering all the data features. To guarantee that the error introduced does not exceed the allowed limit, a certain minimum proportion of the data must be involved in the analysis. This proportion cannot be determined arbitrarily. It should be chosen based on some formal methods, with a consideration of the error inherent in the data. This paper presents some techniques for improving the retrieval efficiency in image-based information systems, with performance guarantees on the reliability of results. Using the statistical theory of occupancy, it develops a model for the formal selection of the minimal subset of image features to be involved in histogram-based similarity evaluation. This guarantees that decisions based on the minimum proportion are always the same as (or close to) the one that would have been reached by considering all the features. Results on real and simulated data show the performance of the model on speedup, robustness, scalability, and performance guarantees.
机译:视觉信息的分析通常涉及对大量数据的操纵。如果结果允许一定的公差,则可以通过适当的选择性处理在这种分析中实现效率的数量级提高,而不必考虑所有数据特征。为了确保引入的误差不超过允许的限制,分析中必须包含一定比例的数据。该比例不能任意确定。应该基于一些形式化方法来选择它,同时要考虑到数据固有的误差。本文提出了一些提高图像信息系统检索效率的技术,并保证了结果的可靠性。使用占用率统计理论,它为正式选择基于直方图相似性评估的图像特征的最小子集开发了一个模型。这保证了基于最小比例的决策始终与考虑所有功能时可能达成的决策相同(或接近)。真实和模拟数据的结果显示了该模型在加速,鲁棒性,可伸缩性和性能保证方面的性能。

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