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Analyzing Appearance and Contour Based Methods for Object Categorization

机译:基于对象分类的外观和基于轮廓的方法

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Object recognition has reached a level where we can identify a large number of previously seen and known objects. However, the more challenging and important task of categorizing previously unseen objects remains largely unsolved. Traditionally, contour and shape based methods are regarded most adequate for handling the generalization requirements needed for this task. Appearance based methods, on the other hand, have been successful in object identification and detection scenarios. Today little work is done to systematically compare existing methods and characterize their relative capabilities for categorizing objects. In order to compare different methods we present a new database specifically tailored to the task of object categorization. It contains high-resolution color images of 80 objects from 8 different categories, for a total of 3280 images. It is used to analyze the performance of several appearance and contour based methods. The best categorization result is obtained by an appropriate combination of different methods.
机译:对象识别已达到一个级别,我们可以识别大量先前看到和已知的对象。然而,分类以前看不见的物体的更具挑战性和重要任务仍然很大程度上是未解决的。传统上,基于轮廓和形状的方法是最适合处理此任务所需的泛化要求。另一方面,基于外观的方法在对象识别和检测方案中成功。今天的工作很少,以系统地比较现有方法并表征它们的相对能力来分类对象。为了比较不同的方法,我们提出了一个专门针对对象分类任务而定制的新数据库。它包含来自8个不同类别的80个对象的高分辨率彩色图像,总共3280个图像。它用于分析几种外观和基于轮廓的方法的性能。最好的分类结果是通过不同方法的适当组合获得的。

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