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A sensor fusion approach for recognizing continuous human grasping sequences using hidden Markov models

机译:一种使用隐马尔可夫模型识别连续人类抓握序列的传感器融合方法

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The Programming by Demonstration (PbD) technique aims at teaching a robot to accomplish a task by learning from a human demonstration. In a manipulation context, recognizing the demonstrator's hand gestures, specifically when and how objects are grasped, plays a significant role. Here, a system is presented that uses both hand shape and contact-point information obtained from a data glove and tactile sensors to recognize continuous human-grasp sequences. The sensor fusion, grasp classification, and task segmentation are made by a hidden Markov model recognizer. Twelve different grasp types from a general, task-independent taxonomy are recognized. An accuracy of up to 95% could be achieved for a multiple-user system.
机译:通过演示编程(PbD)技术旨在教机器人通过从人类演示中学习来完成任务。在操作上下文中,识别演示者的手势(特别是何时以及如何抓住物体)起着重要作用。在这里,提出了一种系统,该系统使用从数据手套和触觉传感器获得的手形和接触点信息来识别连续的人抓握序列。传感器的融合,抓取分类和任务分割由隐藏的马尔可夫模型识别器完成。从一般的,独立于任务的分类法中识别出十二种不同的抓握类型。对于多用户系统,可以达到95%的精度。

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