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首页> 外文期刊>International Journal of Pattern Recognition and Artificial Intelligence >FROM IMAGE FEATURES TO SYMBOLS AND VICE VERSA ― USING GRAPHS TO LOOP DATA- AND MODEL-DRIVEN PROCESSING IN VISUAL ASSEMBLY RECOGNITION
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FROM IMAGE FEATURES TO SYMBOLS AND VICE VERSA ― USING GRAPHS TO LOOP DATA- AND MODEL-DRIVEN PROCESSING IN VISUAL ASSEMBLY RECOGNITION

机译:从图像功能到符号,再到副词,反之—在可视化组件识别中使用图形来处理数据和模型驱动的处理

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摘要

Graphs and graph matching are powerful mechanisms for knowledge representation, pattern recognition and machine learning. Especially in computer vision their application is manifold. Graphs can characterize relations among image features like points or regions but they may also represent symbolic object knowledge. Hence, graph matching can accomplish recognition tasks on different levels of abstraction. In this contribution, we demonstrate that graphs may also bridge the gap between different levels of knowledge representation. We present a system for visual assembly monitoring that integrates bottom-up and top-down strategies for recognition and automatically generates and learns graph models to recognize assembled objects. Data-driven processing is subdived into three stages: first, elementary objects are recognized from low-level image features. Then, clusters of elementary objects are analyzed syntactically; if an assembly structure is found, it is translated into a graph that uniquely models the assembly. Finally, symbolic models like this are stored in a database so that individual assemblies can be recognized by means of graph matching. At the same time, these graphs enable top-down knowledge propagation: they are transformed into graphs which represent relations between image features and thus describe the visual appearance of the recently found assembly. Therefore, due to model-driven knowledge propagation assemblies may subsequently be recognized from graph matching on a lower computational level and tedious bottom-up processing becomes superfluous.
机译:图形和图形匹配是用于知识表示,模式识别和机器学习的强大机制。特别是在计算机视觉中,它们的应用是多种多样的。图形可以描述点或区域等图像特征之间的关系,但它们也可以表示符号对象知识。因此,图匹配可以完成不同抽象级别的识别任务。在这一贡献中,我们证明了图形还可以弥合不同级别的知识表示之间的鸿沟。我们提出了一种用于视觉装配监控的系统,该系统集成了自下而上和自上而下的识别策略,并自动生成和学习图形模型以识别组装的对象。数据驱动的处理分为三个阶段:首先,从低级图像特征中识别基本对象。然后,对基本对象的簇进行语法分析。如果找到装配体结构,则将其转换为唯一地模拟装配体的图形。最后,像这样的符号模型存储在数据库中,以便可以通过图形匹配来识别各个程序集。同时,这些图使自上而下的知识传播成为可能:它们被转换为代表图像特征之间关系的图,从而描述了最近发现的装配体的视觉外观。因此,由于模型驱动的知识的传播,随后可以在较低的计算级别上从图匹配中识别出程序集,并且繁琐的自下而上的处理变得多余。

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