基于视觉、语义和地理信息的多模态图像检索监督模型

Duc-Tien Dang-Nguyen, G. Boato, Alessandro Moschitti, F. D. Natale
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引用次数: 8

摘要

如今,大规模网络社交媒体需要更好的搜索技术来实现合适的性能。多模态方法是改进图像排名的有前途的技术。在元数据不完全可靠的情况下,尤其如此,就用户注释、时间和地点而言,这种情况相当普遍。在本文中,我们建议将视觉信息与额外的多方面信息适当结合起来,从而定义一种新的多模态相似度测量方法。更具体地说,我们将与图像内容密切相关的视觉特征与人工标注概念所代表的语义信息和地理标记(通常以对象/主体位置的形式提供)相结合。此外,我们还提出了一种基于支持向量机(SVM)的监督机器学习方法,以自动学习优化权重,从而将上述特征结合起来。由此产生的模型可用作排序函数,对多模态查询结果进行排序。
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Supervised models for multimodal image retrieval based on visual, semantic and geographic information
Nowadays, large-scale networked social media need better search technologies to achieve suitable performance. Multimodal approaches are promising technologies to improve image ranking. This is particularly true when metadata are not completely reliable, which is a rather common case as far as user annotation, time and location are concerned. In this paper, we propose to properly combine visual information with additional multi-faceted information, to define a novel multimodal similarity measure. More specifically, we combine visual features, which strongly relate to the image content, with semantic information represented by manually annotated concepts, and geo tagging, very often available in the form of object/subject location. Furthermore, we propose a supervised machine learning approach, based on Support Vector Machines (SVMs), to automatically learn optimized weights to combine the above features. The resulting models is used as a ranking function to sort the results of a multimodal query.
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