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Multiple-Instance Image Database Retrieval by Spatial Similarity Based on Interval Neighbor Group

机译:基于区间邻居群的空间相似度多实例图像数据库检索

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摘要

In this paper, a multiple-instance image retrieval system incorporating a general spatial similarity measure is proposed. A multiple-instance learning is employed to summarize the commonality of spatial features among positive and negative example images. The general spatial similarity measure evaluates the degree of similarity between matching atomic spatial relations present in the maximum common object set of the query and a database image based on their nodal distance in an Interval Neighbor Group (ING). The shorter the distance, the higher degree of similarity, while a longer one, a lower degree of similarity. An ensemble similarity measure, derived from the spatial relations of all constituent objects in the query and a database image, will then integrate these atomic spatial similarity assessments and give an overall similarity value between two images. Therefore, images in a database can be quantitatively ranked according to the degree of ensemble spatial similarity with the query. In order to demonstrate the feasibility of the proposed approach, two sets of test for querying an image database are performed, namely, single-instance v.s. multiple-instance retrieval by employing the RSS-ING scheme proposed and the RSS-ING scheme v.s. 2D Be-string similarity method incorporating identical multiple-instance learning. The ING-based spatial similarity measure with fine granularity, combined with the utilization of a multiple-instance learning paradigm to forge a unified query key, produces desirable retrieval results that better match user's expectation.
机译:本文提出了一种结合了一般空间相似性度量的多实例图像检索系统。采用多实例学习来总结正例图像和负例图像之间空间特征的共性。通用空间相似性度量基于间隔邻居组(ING)中的节点距离,评估查询的最大公共对象集中存在的匹配原子空间关系与数据库图像之间的相似度。距离越短,相似度越高,而距离越长,相似度越低。从查询中所有组成对象与数据库图像的空间关系得出的整体相似度度量,然后将这些原子空间相似度评估进行积分,并给出两个图像之间的整体相似度值。因此,可以根据与查询的整体空间相似度对数据库中的图像进行定量排名。为了证明所提出方法的可行性,进行了两组查询图像数据库的测试,即单实例对比。通过采用建议的RSS-ING方案和RSS-ING方案进行多实例检索。包含相同多实例学习的2D Be-string相似性方法。基于ING的具有细粒度的空间相似性度量,结合利用多实例学习范式来形成统一的查询关键字,可产生可更好地满足用户期望的理想检索结果。

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