首页> 外文期刊>International journal of humanoid robotics >A LEARNING METHOD TO DETERMINE HOW TO APPROACH AN UNKNOWN OBJECT TO BE GRASPED
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A LEARNING METHOD TO DETERMINE HOW TO APPROACH AN UNKNOWN OBJECT TO BE GRASPED

机译:确定如何解决未知对象的学习方法

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摘要

We present a learning algorithm to determine the appropriate approaching pose to grasp a novel object. Our method focuses on the computation of valid end-effector orientations in order to make contact with the object at a given point. The system achieves this goal by generalizing from positive examples provided by a human operator during an offline training session. The technique is feature-based since it extracts salient attributes of the object to be grasped rather than relying on the availability of models or trying to build one. To compute the desired orientation, the robot performs three steps at run time. Using a multi-class Support Vector Machine (SVM), it first classifies the novel object into one of the object classes defined during training. Next, it determines its orientation, and, finally, based on the classification and orientation, it extracts the most similar example from the training data and uses it to grasp the object. The method has been implemented on a full-scale humanoid robotic torso equipped with multi-fingered hands and extensive results corroborate both its effectiveness and real-time performance.
机译:我们提出一种学习算法,以确定适当的接近姿势来抓住一个新颖的物体。我们的方法专注于有效末端执行器方向的计算,以便在给定点与对象接触。该系统通过总结操作员在离线培训课程中提供的积极示例来实现此目标。该技术基于特征,因为它提取了要掌握的对象的显着属性,而不是依赖于模型的可用性或尝试构建模型。为了计算所需的方向,机器人在运行时执行三个步骤。它使用多类支持向量机(SVM),首先将新对象分类为训练期间定义的对象类别之一。接下来,确定其方向,最后,基于分类和方向,从训练数据中提取最相似的示例,并使用它来抓取对象。该方法已在配备多指手的完整人形机器人躯干上实施,广泛的结果证实了该方法的有效性和实时性。

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