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Towards automatically learning an implicit model from 2D-images based on a local similarity analysis of contours

机译:在基于轮廓的局部相似性分析,从2D图像自动学习隐式模型

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The article deals with enabling an intelligent system to autonomously learn an implicit model of its environment. An unsupervised learning method is presented which learns the topological connections of different object views. Moreover, the method is able to distinguish between different objects. Based on a systematic local analysis of the objects' contours, the method unites learning a topology (i.e. navigation) and object recognition into one framework.
机译:文章涉及智能系统来自主学习其环境的隐含模型。提出了无监督的学习方法,其学习不同对象视图的拓扑连接。此外,该方法能够区分不同的物体。基于对物体的局部分析对象的轮廓,方法单元学习拓扑(即导航)和对象识别到一个框架中。

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