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Grasp Mapping Using Locality Preserving Projections and kNN Regression

机译:使用局部性保留投影和kNN回归进行抓图

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摘要

In this paper, we propose a novel mapping approach to map a human grasp to a robotic grasp based on human grasp motion trajectories rather than grasp poses, since the grasp trajectories of a human grasp provide more information to disambiguate between different grasp types than grasp poses. Human grasp motions usually contain complex and nonlinear patterns in a high-dimensional space. In this paper, we reduced the high-dimensionality of motion trajectories by using locality preserving projections (LPP). Then, a Hausdorff distance was performed to find the k-nearest neighbor trajectories in the reduced low-dimensional subspace, and k-nearest neighbor (kNN) regression was used to map a demonstrated grasp motion by a human hand to a robotic hand. Several experiments were designed and carried out to compare the robotic grasping trajectory generated with and without the trajectory-based mapping approach. The regression errors of the mapping results show that our approach generates more robust grasps than using only grasp poses. In addition, our approach has the ability to successfully map a grasp motion of a new grasp demonstration that has not been trained before to a robotic hand.
机译:在本文中,我们提出了一种新颖的映射方法,该方法可将人类抓地力映射到基于人类抓地力运动轨迹而非抓握姿势的机器人抓地力,因为人类抓地力的抓握轨迹可提供更多信息来区分不同抓地力类型,而不是抓握姿势。人体抓握运动通常在高维空间中包含复杂的非线性模式。在本文中,我们通过使用局部性保留投影(LPP)降低了运动轨迹的高维性。然后,执行Hausdorff距离以找到缩小的低维子空间中的k最近邻轨迹,然后使用k最近邻(kNN)回归将已证明的人手抓握动作映射到机械手。设计并进行了一些实验,以比较使用和不使用基于轨迹的映射方法生成的机器人抓取轨迹。映射结果的回归误差表明,与仅使用握持姿势相比,我们的方法可产生更强大的握持。此外,我们的方法还能够成功地将以前从未训练过的新抓握演示的抓握动作映射到机械手。

著录项

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    Lin, Yun; Sun, Yu;

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  • 年度 2013
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