Kopnarski Lena, Lippert Laura, Rudisch Julian, Voelcker-Rehage Claudia
Department of Neuromotor Behavior and Exercise, Institute of Sport and Exercise Sciences, University of Münster, Wilhelm-Schickard-Str. 8, 48149, Münster, Germany.
Applied Functional Analysis, Chemnitz University of Technology, 09107, Chemnitz, Germany.
Brain Inform. 2023 Nov 4;10(1):29. doi: 10.1186/s40708-023-00209-4.
In order to grasp and transport an object, grip and load forces must be scaled according to the object's properties (such as weight). To select the appropriate grip and load forces, the object weight is estimated based on experience or, in the case of robots, usually by use of image recognition. We propose a new approach that makes a robot's weight estimation less dependent on prior learning and, thereby, allows it to successfully grasp a wider variety of objects. This study evaluates whether it is feasible to predict an object's weight class in a replacement task based on the time series of upper body angles of the active arm or on object velocity profiles. Furthermore, we wanted to investigate how prediction accuracy is affected by (i) the length of the time series and (ii) different cross-validation (CV) procedures. To this end, we recorded and analyzed the movement kinematics of 12 participants during a replacement task. The participants' kinematics were recorded by an optical motion tracking system while transporting an object, 80 times in total from varying starting positions to a predefined end position on a table. The object's weight was modified (made lighter and heavier) without changing the object's visual appearance. Throughout the experiment, the object's weight (light/heavy) was randomly changed without the participant's knowledge. To predict the object's weight class, we used a discrete cosine transform to smooth and compress the time series and a support vector machine for supervised learning from the achieved discrete cosine transform parameters. Results showed good prediction accuracy (up to [Formula: see text], depending on the CV procedure and the length of the time series). Even at the beginning of a movement (after only 300 ms), we were able to predict the object weight reliably (within a classification rate of [Formula: see text]).
为了抓取和搬运物体,抓握力和负载力必须根据物体的属性(如重量)进行调整。为了选择合适的抓握力和负载力,物体重量通常根据经验估计,或者在机器人的情况下,通常通过图像识别来估计。我们提出了一种新方法,使机器人的重量估计减少对先前学习的依赖,从而使其能够成功抓取更多种类的物体。本研究评估了基于主动臂上身角度的时间序列或物体速度轮廓在替换任务中预测物体重量等级是否可行。此外,我们想研究预测准确性如何受到(i)时间序列长度和(ii)不同交叉验证(CV)程序的影响。为此,我们记录并分析了12名参与者在替换任务中的运动学。参与者在搬运物体时的运动学由光学运动跟踪系统记录,总共80次,从不同的起始位置到桌子上的预定义结束位置。物体的重量在不改变其视觉外观的情况下进行了修改(变轻和变重)。在整个实验过程中,物体的重量(轻/重)在参与者不知情的情况下随机变化。为了预测物体的重量等级,我们使用离散余弦变换对时间序列进行平滑和压缩,并使用支持向量机从获得的离散余弦变换参数中进行监督学习。结果显示出良好的预测准确性(高达[公式:见原文],具体取决于CV程序和时间序列的长度)。即使在运动开始时(仅300毫秒后),我们也能够可靠地预测物体重量(分类准确率在[公式:见原文]以内)。