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Object segmentation and labeling by learning from examples

机译:通过实例学习来进行对象分割和标记

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摘要

We propose a system that employs low-level image segmentation followed by color and two-dimensional (2-D) shape matching to automatically group those low-level segments into objects based on their similarity to a set of example object templates presented by the user. A hierarchical content tree data structure is used for each database image to store matching combinations of low-level regions as objects. The system automatically initializes the content tree with only "elementary nodes" representing homogeneous low-level regions. The "learning" phase refers to labeling of combinations of low-level regions that have resulted in successful color and/or 2-D shape matches with the example template(s). These combinations are labeled as "object nodes" in the hierarchical content tree. Once learning is performed, the speed of second-time retrieval of learned objects in the database increases significantly. The learning step can be performed off-line provided that example objects are given in the form of user interest profiles. Experimental results are presented to demonstrate the effectiveness of the proposed system with hierarchical content tree representation and learning by color and 2-D shape matching on collections of car and face images.
机译:我们提出一种系统,该系统采用低级图像分割,然后进行颜色和二维(2-D)形状匹配,以根据与用户提供的一组示例对象模板的相似性将这些低级段自动分组为对象。分层内容树数据结构用于每个数据库映像,以将低级区域的匹配组合存储为对象。系统仅使用代表同类低层区域的“基本节点”自动初始化内容树。 “学习”阶段指的是对与示例模板成功进行颜色和/或二维形状匹配的低级区域的组合进行标记。这些组合在分层内容树中被标记为“对象节点”。一旦执行了学习,第二次检索数据库中学习到的对象的速度就会大大提高。如果示例对象以用户兴趣配置文件的形式给出,则可以离线执行学习步骤。提出了实验结果,以证明该系统具有分层内容树表示以及通过对汽车和人脸图像集合进行颜色和二维形状匹配学习的有效性。

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