Planar Pushing of Unknown Objects Using a Large-Scale Simulation Dataset and Few-Shot Learning

Ziyan Gao, A. Elibol, N. Chong
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引用次数: 6

Abstract

Contact-rich object manipulation skills challenge the recent success of learning-based methods. It is even more difficult to predict the state of motion of novel objects due to the unknown physical properties and generalization issues of the learning-based model. In this work, we aim to predict the dynamics of novel objects in order to facilitate model-based control methods in planar pushing. We deal with this problem in two aspects. First, we present a large-scale planar pushing simulation dataset called SimPush. It is characterized by a large number of pushes and a variety of object physical properties, providing a wide avenue for exploring the object responses to the pusher action. Secondly, we propose a novel task-aware representation for pushes. This method keeps the spatial relation between the object and pusher and emphasizes the local contact features. Finally, we propose an encoder-decoder structured model possessing a cascaded residual attention mechanism to integrate prior knowledge to infer novel object motions. We experimentally show that the proposed model purely trained by SimPush attains good performance and robust prediction of novel object motions.
基于大规模模拟数据集和Few-Shot学习的未知物体平面推送
富接触对象操作技能挑战了最近成功的基于学习的方法。由于未知的物理性质和基于学习的模型的泛化问题,预测新物体的运动状态变得更加困难。在这项工作中,我们的目标是预测新物体的动力学,以促进基于模型的平面推动控制方法。我们从两个方面来处理这个问题。首先,我们提出了一个名为SimPush的大规模平面推送模拟数据集。它的特点是大量的推动和各种物体的物理性质,为探索物体对推动作用的响应提供了广阔的途径。其次,我们提出了一种新的任务感知表示。该方法既保留了物体与推手之间的空间关系,又强调了局部接触特征。最后,我们提出了一个具有级联残余注意机制的编码器-解码器结构模型,以整合先验知识来推断新的物体运动。实验结果表明,单纯使用SimPush训练的模型对新物体运动具有良好的预测性能和鲁棒性。
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