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Flickr-based Semantic Context to refine Automatic Photo Annotation

机译:基于Flickr的语义背景,可以改进自动照片注释

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Automatic photo annotation task aims to describe the semantic content by detecting high level concepts in order to further facilitate concept based video retrieval. Most of existing approaches are based on independent semantic concept detectors without considering the contextual correlation between concepts. This drawback has its impact over the efficiency of such systems. Recently, harnessing contextual information to improve the effectiveness of concepts detection becomes a promising direction in such field. In this paper, we propose a new contextbased annotation refinement process. For this purpose, we define a new semantic measure called "Second Order Co-occurence Flickr context similarity" (SOCFCS) which aims to extract the semantic context correlation between two concepts by exploring Flickr resources (Flickr related-tags). Our measure is an extension of FCS measure by taking into consideration the FCS values of common Flickr related-tags of the two target concepts. Our proposed measure is applied to build a concept network which models the semantic context inter-relationships among concepts. A Random Walk with Restart process is performed over this network to refine the annotation results by exploring the contextual correlation among concepts. Experimental studies are conducted on ImageCLEF 2011 Collection containing 10000 images and 99 concepts. The results demonstrate the effectiveness of our proposed approach.
机译:自动照片注释任务旨在通过检测高级概念来描述语义内容,以便进一步促进基于概念的视频检索。现有的大多数方法基于独立的语义概念探测器,而不考虑概念之间的上下文相关性。这种缺点对这种系统的效率产生了影响。最近,利用上下文信息来提高概念检测的有效性在这种场中成为有希望的方向。在本文中,我们提出了一个新的上下背景的注释改进过程。为此目的,我们定义了一个名为“二阶共同发生Flickr上下文相似性”(SOCFC)的新语义测量,其目的是通过探索Flickr资源(Flickr相关标签)来提取两个概念之间的语义上下文相关性。我们的措施是通过考虑两个目标概念的共同Flickr相关标签的FCS值来延长FCS措施。我们提出的措施适用于构建一个概念网络,该网络模拟概念之间的语义上下文相互关系。通过该网络执行与重启过程的随机步行,通过探索概念之间的上下文相关性来优化注释结果。实验研究在ImageClef 2011收集中进行了10000图像和99个概念。结果表明了我们提出的方法的有效性。

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