社会图像搜索结果的概念保留视觉摘要

S. Takale, P. Kulkarni
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引用次数: 0

摘要

现有的基于标签的社交媒体搜索引擎以图像排序列表的形式呈现搜索结果。但是,它们无法识别查询结果中存在的视觉、文本和地理概念。在本文中,我们提出了一种自动生成视觉、文本和地理概念保留的社会图像搜索结果摘要的方法。对于用户指定的查询,从流行的内容共享网站(如Flickr)收集搜索结果。该算法的目的是生成具有代表性但多样化的摘要,其中包含一组图像、与查询相关的兴趣位置(LOI)信息和一组描述图像上下文的标记。该方案利用多种模式来理解地理标记社会图像的背景和内容。我们将这个问题表述为一个图聚类问题,其中节点是图像,边缘权重是通过地理距离、图像之间基于标签的相似性和图像之间的视觉相似性来计算的。为了减少计算量,我们实现了三种不同边权参数的后期融合。提出了一种基于Haversine距离公式的基于图的地理聚类算法。绩效评价基于内在和外在两种方法。我们还提出了一种没有人为干预的评估方案,用于评估图像在最终结果中的地理传播覆盖率和聚类一致性。通过实证研究,我们证明了该算法对最先进的图像搜索结果摘要方法的有效性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Concept Preserving Visual Summarization of Social Image Search Results
Existing tag based social media search engines present search results as a ranked list of images. But, they fail to identify visual, textual and geographical concepts present in query results. In this paper, we present an approach for automatic generation of visual, textual and geographical concept preserving summary of social image search results. For user specified query, search results are collected from popular content-sharing websites such as Flickr. Aim of the algorithm is, to generate representative but diverse summary having a set of images, information about locations-of-interest (LOI) associated with the query, and a set of tags, describing the context of images. The proposed scheme exploits multiple modalities in order to understand context and content of geotagged social images. We formulate the problem as a graph clustering problem, where nodes are images and edge weight is computed as geo-graphical distance, tag-based similarity between images and visual similarity between images. In order to reduce the computational overhead, we implement late fusion of three different edge weight parameters. An innovative Graph based clustering algorithm using Haversine distance formula is proposed for geo-clustering of images. Performance evaluation is based on intrinsic and extrinsic methods. We also present an evaluation protocol having no human intervention for evaluating coverage of geographical spread of images in the final result and cluster coherence. Through empirical study, we demonstrate the effectiveness of our algorithm against state-of-the-art image search result summarization methods.
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