E-TRoll: Tactile Sensing and Classification via A Simple Robotic Gripper for Extended Rolling Manipulations

Xiaoxia Zhou, A. Spiers
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引用次数: 2

Abstract

Robotic tactile sensing provides a method of recognizing objects and their properties where vision fails. Prior work on tactile perception in robotic manipulation has frequently focused on exploratory procedures (EPs). However, the also-human-inspired technique of in-hand-manipulation can glean rich data in a fraction of the time of EPs. We propose a simple 3-DOF robotic hand design, optimized for object rolling tasks via a variable-width palm and associated control system. This system dynamically adjusts the distance between the finger bases in response to object behavior. Compared to fixed finger bases, this technique significantly increases the area of the object that is exposed to finger-mounted tactile arrays during a single rolling motion (an increase of over 60% was observed for a cylinder with a 30-millimeter diameter). In addition, this paper presents a feature extraction algorithm for the collected spatiotemporal dataset, which focuses on object corner identification, analysis, and compact representation. This technique drastically reduces the dimensionality of each data sample from $\boldsymbol{10\times 1500}$ time series data to 80 features, which was further reduced by Principal Component Analysis (PCA) to 22 components. An ensemble subspace k-nearest neighbors (KNN) classification model was trained with 90 observations on rolling three different geometric objects, resulting in a three-fold cross-validation accuracy of 95.6% for object shape recognition.
电子巨魔:通过一个简单的机器人抓手进行扩展滚动操作的触觉感知和分类
机器人触觉感知提供了一种识别物体及其特性的方法,而视觉无法识别。在机器人操作中触觉感知的先前工作经常集中在探索性程序(EPs)上。然而,同样受人类启发的手工操作技术可以在EPs的一小部分时间内收集到丰富的数据。我们提出了一种简单的3-DOF机械手设计,通过变宽手掌和相关控制系统对物体滚动任务进行了优化。该系统根据物体的行为动态调整手指基部之间的距离。与固定指基相比,该技术在单次滚动运动中显著增加了暴露于手指触觉阵列的物体面积(对于直径为30毫米的圆柱体,增加了60%以上)。此外,本文还提出了一种针对采集到的时空数据集的特征提取算法,该算法侧重于目标角点的识别、分析和紧凑表示。该技术将$\boldsymbol{10\times 1500}$时间序列数据的每个数据样本的维数大幅降低到80个特征,并通过主成分分析(PCA)进一步减少到22个特征。通过对滚动3个不同几何物体的90个观测值训练了一个集合子空间k近邻(KNN)分类模型,得到了3倍交叉验证的物体形状识别准确率,达到95.6%。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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