An application of fuzzy DL-based semantic perception to soil container classification

M. Eich
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引用次数: 8

Abstract

Semantic perception and object labeling are key requirements for robots interacting with objects on a higher level. Symbolic annotation of objects allows the usage of planning algorithms for object interaction, for instance in a typical fetchand-carry scenario. In current research, perception is usually based on 3D scene reconstruction and geometric model matching, where trained features are matched with a 3D sample point cloud. In this work we propose a semantic perception method which is based on spatio-semantic features. These features are defined in a natural, symbolic way, such as geometry and spatial relation. In contrast to point-based model matching methods, a spatial ontology is used where objects are rather described how they "look like", similar to how a human would described unknown objects to another person. A fuzzy based reasoning approach matches perceivable features with a spatial ontology of the objects. The approach provides a method which is able to deal with senor noise and occlusions. Another advantage is that no training phase is needed in order to learn object features. The use-case of the proposed method is the detection of soil sample containers in an outdoor environment which have to be collected by a mobile robot. The approach is verified using real world experiments.
模糊语义感知在土壤容器分类中的应用
语义感知和对象标记是机器人在更高层次上与对象交互的关键要求。对象的符号注释允许使用对象交互的规划算法,例如在典型的取-取场景中。在目前的研究中,感知通常基于三维场景重建和几何模型匹配,其中训练好的特征与三维样本点云进行匹配。本文提出了一种基于空间语义特征的语义感知方法。这些特征以一种自然的、象征性的方式定义,比如几何和空间关系。与基于点的模型匹配方法相比,空间本体被用来描述物体的“样子”,类似于人类向另一个人描述未知物体的方式。基于模糊的推理方法将可感知的特征与对象的空间本体相匹配。该方法提供了一种能够处理传感器噪声和遮挡的方法。另一个优点是不需要训练阶段来学习对象特征。所提出的方法的用例是在室外环境中检测必须由移动机器人收集的土壤样本容器。通过实际实验验证了该方法的有效性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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