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Automatic annotation of image databases based on implicit crowdsourcing, visual concept modeling and evolution

机译:基于隐式众包,视觉概念建模和演化的图像数据库自动注释

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摘要

In this paper a novel approach for automatically annotating image databases is proposed. Despite most current schemes that are just based on spatial content analysis, the proposed method properly combines several innovative modules for semantically annotating images. In particular it includes: (a) a GWAP-oriented interface for optimized collection of implicit crowdsourcing data, (b) a new unsupervised visual concept modeling algorithm for content description and (c) a hierarchical visual content display method for easy data navigation, based on graph partitioning. The proposed scheme can be easily adopted by any multimedia search engine, providing an intelligent way to even annotate completely non-annotated content or correct wrongly annotated images. The proposed approach currently provides very interesting results in limited-size both standard and generic datasets and it is expected to add significant value especially to billions of non-annotated images existing in the Web. Furthermore expert annotators can gain important knowledge relevant to user new trends, language idioms and styles of searching.
机译:本文提出了一种自动注释图像数据库的新方法。尽管当前大多数方案仅基于空间内容分析,但所提出的方法适当地组合了几种创新模块来对图像进行语义注释。具体而言,它包括:(a)基于GWAP的接口,用于优化隐式众包数据的收集;(b)用于内容描述的新的无监督视觉概念建模算法;以及(c)用于方便数据导航的分层视觉内容显示方法,基于在图分区上。所提出的方案可以被任何多媒体搜索引擎轻易地采用,从而提供了一种甚至完全注释未注释内容或纠正错误注释图像的智能方式。提出的方法目前在标准和通用数据集的有限大小中提供了非常有趣的结果,并且有望为Web中存在的数十亿个非注释图像特别增加可观的价值。此外,专家注释者可以获得与用户新趋势,语言习语和搜索样式相关的重要知识。

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