通过操作和机器人自我识别改进对象学习

Natalia Lyubova, David Filliat, S. Ivaldi
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引用次数: 11

摘要

我们提出了一种开发方法,允许人形机器人在第一阶段通过与人类伙伴的交互不断增量地学习实体,然后将这些实体分类为对象、人或机器人部件,并在第二阶段使用这些知识通过操纵来改进对象模型。这种方法不需要事先了解机器人、人或物体的外观。提出的感知系统将视觉空间分割成原型对象,分析它们的外观,并将它们与物理实体联系起来。然后根据本体感觉的互信息和运动统计对实体进行分类。区分机器人部件和被操作对象的能力允许在操作过程中使用新观察到的对象视图更新对象模型。我们在一个iCub机器人上对我们的系统进行了评估,通过佩戴不同颜色的手套,展示了自我识别方法对机器人手部外观的独立性。使用自我识别的交互式对象学习与仅通过观察学习相比,显示出物体识别精度的提高。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Improving object learning through manipulation and robot self-identification
We present a developmental approach that allows a humanoid robot to continuously and incrementally learn entities through interaction with a human partner in a first stage before categorizing these entities into objects, humans or robot parts and using this knowledge to improve objects models by manipulation in a second stage. This approach does not require prior knowledge about the appearance of the robot, the human or the objects. The proposed perceptual system segments the visual space into proto-objects, analyses their appearance, and associates them with physical entities. Entities are then classified based on the mutual information with proprioception and on motion statistics. The ability to discriminate between the robot's parts and a manipulated object then allows to update the object model with newly observed object views during manipulation. We evaluate our system on an iCub robot, showing the independence of the self-identification method on the robot's hands appearances by wearing different colored gloves. The interactive object learning using self-identification shows an improvement in the objects recognition accuracy with respect to learning through observation only.
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