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Feature Combination in Kernel Space for Distance Based Image Hashing

机译:基于距离的图像散列在内核空间中的特征组合

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摘要

The paper presents a novel feature based indexing scheme for image collections. The scheme presents the extension of distance based hashing to kernel space for generating the indexing structure based on similarity in kernel space. The objective of the scheme is to incorporate multiple features for defining the image indexing space using the concept of multiple kernel learning. However, the indexing problems are defined with unique learning objective; therefore, a novel application of genetic algorithm is presented for the optimization task. The extensive evaluation of the proposed concept is performed for developing word based document indexing application of Devanagari, Bengali, and English scripts. In addition, the efficacy of the proposed concept is shown by experimental evaluations on handwritten digits and natural image collection.
机译:本文提出了一种新颖的基于特征的图像采集索引方案。该方案提出了基于距离的哈希算法到内核空间的扩展,用于基于内核空间的相似性来生成索引结构。该方案的目的是结合使用多个内核学习概念定义图像索引空间的多个功能。但是,索引问题是通过独特的学习目标来定义的;因此,提出了遗传算法在优化任务中的新应用。对提出的概念进行了广泛的评估,以开发Devanagari,孟加拉语和英语脚本的基于单词的文档索引应用程序。此外,通过对手写数字和自然图像收集的实验评估,表明了所提出概念的有效性。

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