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Combining top-down spatial reasoning and bottom-up object class recognition for scene understanding

机译:将自上而下的空间推理与自下而上的对象类别识别相结合以进行场景理解

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Many robot perception systems are built to only consider intrinsic object features to recognise the class of an object. By integrating both top-down spatial relational reasoning and bottom-up object class recognition the overall performance of a perception system can be improved. In this paper we present a unified framework that combines a 3D object class recognition system with learned, spatial models of object relations. In robot experiments we show that our combined approach improves the classification results on real world office desks compared to pure bottom-up perception. Hence, by using spatial knowledge during object class recognition perception becomes more efficient and robust and robots can understand scenes more effectively.
机译:许多机器人感知系统仅考虑内部物体特征来识别物体的类别。通过整合自上而下的空间关系推理和自下而上的对象类别识别,可以提高感知系统的整体性能。在本文中,我们提出了一个统一的框架,该框架将3D对象类识别系统与学习的对象关系空间模型相结合。在机器人实验中,我们证明了与纯自下而上的感知相比,我们的组合方法改善了在现实世界中办公桌上的分类结果。因此,通过在对象类别识别期间使用空间知识,感知将变得更加高效和强大,并且机器人可以更有效地理解场景。

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