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Harvesting weakly-tagged images for computer vision tasks

机译:收获计算机视觉任务的弱标记图像

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摘要

To crawl large amounts of weakly-tagged images for computer vision tasks such as object detection and scene recognition, it is very important to develop new techniques for tag cleansing and word sense disambiguation (i.e., removing irrelevant images from the crawled results). Based on this observation, a topic network is first generated to characterize both the semantic similarity contexts and the visual similarity contexts between the image topics more sufficiently. The topic network is used to represent the classes of objects and scenes of interest. Second, both the visual similarity contexts between the images and the semantic similarity contexts between their tags are integrated for tag cleansing and word sense disambiguation. By addressing the issues of polysemes and synonyms more effectively, our word sense disambiguation algorithm can determine the relevance between the images and the associated tags more precisely, and thus it can allow us to crawl large-scale weakly-tagged images for computer vision tasks.
机译:为了抓取大量的计算机视觉任务,例如对象检测和场景识别等计算机视觉任务,开发用于标签清洁和词语感歧义的新技术非常重要(即,从爬网结果中移除无关的图像)。基于该观察,首先生成主题网络以更充分地生成图像主题之间的语义相似度上下文和视觉相似度上下文。主题网络用于表示感兴趣的对象类和场景。其次,无论是图像和他们的标签之间的语义相似上下文之间的视觉相似上下文集成了标签清洁和词义消歧。通过解决PolySemes和同义词更有效的同义词,我们的话语消歧算法可以更准确地确定图像和相关标签之间的相关性,因此它可以允许我们抓取用于计算机视觉任务的大规模弱标记的图像。

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