应用量子放大系统进行图像特征匹配和图像推荐

D. Andreev, M. Lazarova
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引用次数: 1

摘要

提出了一种改进图像特征匹配和推荐系统性能的新方法,该方法是[3]中先前工作的主要延续。为了处理二值图像特征描述符,提出了一种先进的聚类方法:基于ORB描述符的k-多数算法的量子变体。采用Jaccard-Needham不相似测度作为算法的距离测度步骤。最后,使用Grover算法,为数据库中的特定特征搜索提供了机会。本文还提供了构建类似快速检索系统的主要步骤。描述了从经典表示算法到量子表示算法的转换。这种方法可以应用于其他应用。文中还指出了计算复杂度和验证正确性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Applying a quantum amplification over a system for image feature matching and image recommendation
A novel approach for improving the performance of a image feature matching and recommendation system is proposed that is a major continuation of the previous work in [3]. An advanced clustering method is suggested in order to deal with the binary image feature descriptors: a quantum variant of the k-majority algorithm over ORB descriptors. Jaccard-Needham dissimilarity measure is used as a distance measure step of the algorithm. Finally, the Grover's algorithm is used, providing the opportunity for a specific feature search in the database. The paper also provides the main steps in constructing a similar fast search system. The transformation from a classical to a quantum representation algorithm is described. Such approach can be applied in other applications. Both the computational complexity and the verification correctness are also indicated in the paper.
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