首页> 外文会议>Pattern Recognition; Lecture Notes in Computer Science; 4174 >Learning to Mimic Motion of Human Arm and Hand Grabbing for Constraint Adaptation
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Learning to Mimic Motion of Human Arm and Hand Grabbing for Constraint Adaptation

机译:学习模仿人的手臂运动和手抓住以适应约束

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We propose a model for learning the articulated motion of human arm and hand grabbing. The goal is to generate plausible trajectories of joints that mimic the human movement using deformation information. The trajectories are then mapped to a constraint space. These constraints can be the space of start and end configuration of the human body and task-specific constraints such as avoiding an obstacle, picking up and putting down objects. Such a model can be used to develop humanoid robots that move in a human-like way in reaction to diverse changes in their environment and as a priori model for motion tracking. The model proposed to accomplish this uses a combination of principal component analysis (PCA) and a special type of a topological map called the dynamic cell structure (DCS) network. Experiments on arm and hand movements show that this model is able to successfully generalize movement using a few training samples for free movement, obstacle avoidance and grabbing objects.
机译:我们提出了一个用于学习人手臂和手的关节运动的模型。目标是使用变形信息生成模仿人类运动的关节的合理轨迹。然后将轨迹映射到约束空间。这些约束可以是人体开始和结束配置的空间,也可以是特定任务的约束,例如避开障碍物,捡起和放下物体。这样的模型可用于开发以类似于人类的方式运动的人形机器人,以响应其环境的各种变化,并作为运动跟踪的先验模型。为实现此目的而提出的模型使用了主成分分析(PCA)和一种称为动态单元结构(DCS)网络的特殊类型的拓扑图的组合。手臂和手部动作的实验表明,该模型能够使用一些用于自由移动,避开障碍物和抓住物体的训练样本成功地概括运动。

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