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Human Intention Recognition Based Assisted Telerobotic Grasping of Objects in an Unstructured Environment.

机译:在非结构化环境中基于人类意图识别的对象的辅助机器人机器人抓取。

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摘要

In this dissertation work, a methodology is proposed to enable a robot to identify an object to be grasped and its intended grasp configuration while a human is teleoperating a robot towards the desired object. Based on the detected object and grasp configuration, the human is assisted in the teleoperation task. The environment is unstructured and consists of a number of objects, each with various possible grasp configurations. The identification of the object and the grasp configuration is carried out in real time, by recognizing the intention of the human motion. Simultaneously, the human user is assisted to preshape over the desired grasp configuration. This is done by scaling the components of the remote arm end-effector motion that lead to the desired grasp configuration and simultaneously attenuating the components that are in perpendicular directions. The complete process occurs while manipulating the master device and without having to interact with another interface. Intention recognition from motion is carried out by using Hidden Markov Model (HMM) theory. First, the objects are classified based on their shapes. Then, the grasp configurations are preselected for each object class. The selection of grasp configurations is based on the human knowledge of robust grasps for the various shapes. Next, an HMM for each object class is trained by having a skilled teleoperator perform repeated preshape trials over each grasp configuration of the object class in consideration. The grasp configurations are modeled as the states of each HMM whereas the projections of translation and orientation vectors, over each reference vector, are modeled as observations. The reference vectors are the ideal translation and rotation trajectories that lead the remote arm end-effector towards a grasp configuration. During an actual grasping task performed by a novice or a skilled user, the trained model is used to detect their intention. The output probability of the HMM associated with each object in the environment is computed as the user is teleoperating towards the desired object. The object that is associated with the HMM which has the highest output probability, is taken as the desired object. The most likely Viterbi state sequence of the selected HMM gives the desired grasp configuration. Since an HMM is associated with every object, objects can be shuffled around, added or removed from the environment without the need to retrain the models. In other words, the HMM for each object class needs to be trained only once by a skilled teleoperator. The intention recognition algorithm was validated by having novice users, as well as the skilled teleoperator, grasp objects with different grasp configurations from a dishwasher rack. Each object had various possible grasp configurations. The proposed algorithm was able to successfully detect the operator's intention and identify the object and the grasp configuration of interest. This methodology of grasping was also compared with unassisted mode and maximum-projection mode. In the unassisted mode, the operator teleoperated the arm without any assistance or intention recognition. In the maximum-projection mode, the maximum projection of the motion vectors was used to determine the intended object and the grasp configuration of interest. Six healthy and one wheelchair-bound individuals, each executed twelve pick-and-place trials in intention-based assisted mode and unassisted mode. In these trials, they picked up utensils from the dishwasher and laid them on a table located next to it. The relative positions and orientations of the utensils were changed at the end of every third trial. It was observed that the subjects were able to pick-and-place the objects 51% faster and with less number of movements, using the proposed method compared to the unassisted method. They found it much easier to execute the task using the proposed method and experienced less mental and overall workloads. Two able-bodied subjects also executed three preshape trials over three objects in intention-based assisted and maximum projection mode. For one of the subjects, the objects were shuffled at the end of the six trials and she was asked to carry out three more preshape trials in the two modes. This time, however, the subject was made to change their intention when she was about to preshape to the grasp configurations. It was observed that intention recognition was consistently accurate through the trajectory in the intention-based assisted method except at a few points. However, in the maximum-projection method the intention recognition was consistently inaccurate and fluctuated. This often caused to subject to be assisted in the wring directions and led to extreme frustration. The intention-based assisted method was faster and had less hand movements. The accuracy of the intention based method did not change when the objects were shuffled. It was also shown that the model for intention recognition can be trained by a skilled teleoperator and be used by a novice user to efficiently execute a grasping task in teleoperation.
机译:在本论文的工作中,提出了一种方法,该方法使机器人能够在人类朝着所需对象远距离操作机器人时识别要抓握的物体及其预期的抓握配置。根据检测到的物体和抓握配置,协助人员进行远程操作。该环境是非结构化的,由许多对象组成,每个对象具有各种可能的抓取配置。通过识别人体运动的意图,实时进行物体和抓握配置的识别。同时,协助人类使用者对所需的抓握构型进行预塑形。这是通过缩放导致所需的抓握配置的远程手臂末端执行器运动的分量并同时衰减垂直方向上的分量来完成的。完整的过程在操纵主设备时发生,而无需与另一个接口进行交互。通过使用隐马尔可夫模型(HMM)理论进行运动中的意图识别。首先,根据对象的形状对对象进行分类。然后,为每个对象类别预先选择抓握配置。抓握配置的选择基于对各种形状的坚固抓握的人类知识。接下来,通过让熟练的远程操作人员对所考虑的对象类别的每个抓握配置执行重复的预成型试验,来训练每个对象类别的HMM。抓取配置被建模为每个HMM的状态,而平移和方向矢量在每个参考矢量上的投影被建模为观察值。参考矢量是理想的平移和旋转轨迹,可将远程手臂末端执行器引向抓握配置。在由新手或熟练用户执行的实际抓紧任务中,训练有素的模型用于检测他们的意图。与环境中每个对象相关联的HMM的输出概率是在用户朝着所需对象进行远程操作时计算的。与具有最高输出概率的HMM关联的对象被视为所需对象。所选HMM的最可能的维特比状态序列可提供所需的抓取配置。由于HMM与每个对象相关联,因此无需重新训练模型就可以在环境中随机移动,添加或删除对象。换句话说,每个对象类别的HMM仅需要由熟练的远程操作员训练一次。通过使新手用户以及熟练的远程操作员从洗碗机架上抓取具有不同抓握配置的对象来验证意图识别算法。每个对象都有各种可能的抓取配置。所提出的算法能够成功地检测出操作者的意图,并识别出目标和感兴趣的抓握配置。还将该抓取方法与无辅助模式和最大投影模式进行了比较。在非辅助模式下,操作员在没有任何帮助或意图识别的情况下遥控了手臂。在最大投影模式下,运动矢量的最大投影用于确定目标物体和感兴趣的抓握配置。六名健康且一名轮椅使用者,分别在基于意图的辅助模式和非辅助模式下执行了十二次取放试验。在这些试验中,他们从洗碗机中取出餐具,并将其放在旁边的桌子上。在第三次试验结束时,会改变餐具的相对位置和方向。观察到,与无辅助方法相比,使用所提出的方法,受试者能够以51%的速度更快地拾取和放置对象,并且移动次数更少。他们发现使用建议的方法执行任务要容易得多,并且脑力劳动和整体工作量减少。两名身体健全的受试者还在基于意图的辅助和最大投影模式下对三个对象执行了三个预成型试验。对于其中一名受试者,在六次试验结束时将物品打乱,并要求她在两种模式下再进行三次预成型试验。然而,这一次,当对象准备对抓握构型进行预成型时,使对象改变了他们的意图。观察到,在基于意向的辅助方法中,通过轨迹的意图识别始终是准确的,除了少数几点。然而,在最大投影方法中,意图识别始终不准确且波动。这通常会使受试者在拧紧方向上受到帮助,并导致极大的挫败感。基于意图的辅助方法更快,手部动作更少。改组对象时,基于意图的方法的准确性没有改变。还表明,意图识别模型可以由熟练的远程操作员训练,并由新手用户使用以有效地执行远程操作中的抓握任务。

著录项

  • 作者

    Khokar, Karan.;

  • 作者单位

    University of South Florida.;

  • 授予单位 University of South Florida.;
  • 学科 Robotics.;Computer science.;Mechanical engineering.
  • 学位 Ph.D.
  • 年度 2013
  • 页码 134 p.
  • 总页数 134
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类
  • 关键词

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