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Deep learning a grasp function for grasping under gripper pose uncertainty

机译:深入学习抓握抓地夹在夹持下的掌握功能构成不确定性

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This paper presents a new method for parallel-jaw grasping of isolated objects from depth images, under large gripper pose uncertainty. Whilst most approaches aim to predict the single best grasp pose from an image, our method first predicts a score for every possible grasp pose, which we denote the grasp function. With this, it is possible to achieve grasping robust to the gripper's pose uncertainty, by smoothing the grasp function with the pose uncertainty function. Therefore, if the single best pose is adjacent to a region of poor grasp quality, that pose will no longer be chosen, and instead a pose will be chosen which is surrounded by a region of high grasp quality. To learn this function, we train a Convolutional Neural Network which takes as input a single depth image of an object, and outputs a score for each grasp pose across the image. Training data for this is generated by use of physics simulation and depth image simulation with 3D object meshes, to enable acquisition of sufficient data without requiring exhaustive real-world experiments. We evaluate with both synthetic and real experiments, and show that the learned grasp score is more robust to gripper pose uncertainty than when this uncertainty is not accounted for.
机译:本文提出了一种新的夹爪从深度图像抓住隔离对象的新方法,在大的夹持下的姿势不确定度。虽然大多数方法旨在预测来自图像的单一最佳掌握姿势,我们的方法首先预测每个可能的掌握姿势的分数,我们表示掌握功能。由此,可以通过使掌握功能与构成不确定性功能平滑掌握功能来实现对夹具的构成不确定性的抓握稳健。因此,如果单一最佳姿势与掌握质量差的区域相邻,则将不再选择该姿势,而是选择姿势,而是由高抓握质量的区域包围的姿势。为了学习此功能,我们训练一个卷积神经网络,该神经网络作为输入的单个深度图像,并输出跨图像的每个掌握姿势的分数。通过使用物理仿真和深度图像仿真与3D对象网格来生成的训练数据,以便在不需要详尽的现实实验的情况下采集足够的数据。我们通过合成和实验评估,并表明学习的掌握得分对夹具构成不确定度比不确定性的不确定性更强。

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