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From passive to interactive object learning and recognition through self-identification on a humanoid robot

机译:从人形机器人上的自我识别,从被动到交互式的对象学习和识别

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摘要

Service robots, working in evolving human environments, need the ability to continuously learn to recognize newobjects. Ideally, they should act as humans do, by observing their environment and interacting with objects, without specific supervision. Taking inspiration from infant development, we propose a developmental approach that enables a robot to progressively learn objects appearances in a social environment: first, only through observation, then through active object manipulation. We focus on incremental, continuous, and unsupervised learning that does not require prior knowledge about the environment or the robot. In the first phase, we analyse the visual space and detect protoobjects as units of attention that are learned and recognized as possible physical entities. The appearance of each entity is represented as a multi-view model based on complementary visual features. In the second phase, entities are classified into three categories: parts of the body of the robot, parts of a human partner, and manipulable objects. The categorization approach is based on mutual information between the visual and proprioceptive data, and on motion behaviour of entities. The ability to categorize entities is then used during interactive object exploration to improve the previously acquired objects models. The proposed system is implemented and evaluated with an iCub and a Meka robot learning 20 objects. The system is able to recognize objects with 88.5% success and create coherent representation models that are further improved by interactive learning.
机译:在不断发展的人类环境中工作的服务机器人需要不断学习识别新对象的能力。理想情况下,它们应像人类一样,通过观察其环境并与对象进行交互而无需特定的监督。从婴儿发育中获得启发,我们提出了一种开发方法,该方法使机器人能够逐步学习社交环境中的物体外观:首先,仅通过观察,然后通过主动的物体操纵。我们专注于不需要事先了解环境或机器人知识的增量,连续和无监督学习。在第一阶段,我们分析视觉空间并检测作为关注单元的原型对象,这些对象被学习并识别为可能的物理实体。每个实体的外观都表示为基于互补视觉特征的多视图模型。在第二阶段,实体分为三类:机器人的身体部位,人类伴侣的部位和可操纵的对象。分类方法是基于视觉和本体感受数据之间的相互信息,以及实体的运动行为。然后在交互式对象探索期间使用对实体进行分类的功能来改善先前获取的对象模型。拟议的系统是通过iCub和Meka机器人学习20个对象来实施和评估的。该系统能够识别成功率为88.5%的对象,并创建连贯的表示模型,通过交互式学习进一步改善该模型。

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