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Semiautomatic labeling of generic objects for enlarging annotated image databases

机译:半自动标记通用对象以扩大带注释的图像数据库

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Having large databases of annotated images is important for many applications in computer vision and computer graphics. Some of the largest databases of annotated images rely on user participation (as in Flickr, LabelMe or Peekaboom). In this paper we address the problem of performing semiautomatic object labeling as a way of providing new annotated images. Some current efforts in this direction provide bounding boxes as the annotations (i.e. OPTIMOL and Seville Systems). However, in this work we present an approach that relies on a boosting process to automatically create polygonal annotations for objects similar to those entered by users in tools such as LabelMe. In particular, we train single class boosting classifiers using local image features to perform the simultaneous object detection and segmentation. We validate our approach using different object classes from the LabelMe, the TUD and the Weizmann databases. Moreover, our experiments show that we are able to correctly annotate new data returned by internet search engines.
机译:具有批注图像的大型数据库对于计算机视觉和计算机图形中的许多应用很重要。一些最大的带注释图像数据库依赖于用户的参与(例如Flickr,LabelMe或Peekaboom)。在本文中,我们解决了执行半自动对象标记作为提供新带注释图像的方法的问题。当前在此方向上的一些努力提供了边界框作为注释(即OPTIMOL和Seville Systems)。但是,在这项工作中,我们提出了一种依靠提升过程自动为对象创建多边形注释的方法,该注释与用户在LabelMe等工具中输入的对象相似。特别地,我们使用局部图像特征训练单类增强分类器,以执行同时的对象检测和分割。我们使用LabelMe,TUD和Weizmann数据库中的不同对象类来验证我们的方法。此外,我们的实验表明,我们能够正确注释互联网搜索引擎返回的新数据。

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