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首页> 外文期刊>IEEE Robotics and Automation Letters >A Comparison of Autoregressive Hidden Markov Models for Multimodal Manipulations With Variable Masses
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A Comparison of Autoregressive Hidden Markov Models for Multimodal Manipulations With Variable Masses

机译:变质量多模态运动自回归隐马尔可夫模型的比较

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In contact-based manipulations, the effects of the robot's actions change as contacts are made or broken. For example, if a robot applies an increasing upward force to an object, then the force will eventually overcome the object's weight and break the object–table contact. The robot can subsequently raise or lower the height of the object. The transition from resting on the table to not being in contact with the table is an example of a mode switch. The conditions for this mode switch depend on the mass of the object being manipulated. By modeling the mode switch, the robot can estimate the mass of the object based on the conditions when the mode switch occurs. The robot can also use the model to predict when the object will break contact given its mass. We evaluated four different autoregressive hidden Markov models for representing manipulations with mass-dependent mode switches. The models were successfully evaluated on pushing and lifting tasks. The evaluations show that the predicted object trajectories and estimated object masses are more accurate when using models that interpolate between different masses, and that consider the observed state for estimating the mode switches.
机译:在基于接触的操纵中,机器人动作的效果会随着接触的建立或断开而改变。例如,如果机器人对物体施加越来越大的向上力,则该力最终将克服物体的重量并破坏物体与桌子的接触。机器人随后可以升高或降低物体的高度。从搁在桌子上到不与桌子接触的过渡是模式开关的示例。此模式切换的条件取决于所操纵对象的质量。通过对模式切换进行建模,机器人可以根据模式切换发生时的条件估算物体的质量。机器人还可以使用该模型预测物体在给定质量的情况下何时会断开接触。我们评估了四种不同的自回归隐马尔可夫模型,以表示与质量相关的模式开关的操纵。该模型已成功评估了推升任务。评估表明,当使用在不同质量之间进行插值的模型时,预测对象的轨迹和估计的对象质量更准确,并且考虑了观察状态以估计模式切换。

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