首页> 外文期刊>Journal of robotics and mechatronics >Classification of Prism Object Shapes Utilizing Tactile Spatiotemporal Differential Information Obtained from Grasping by Single-Finger Robot Hand with Soft Tactile Sensor Array
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Classification of Prism Object Shapes Utilizing Tactile Spatiotemporal Differential Information Obtained from Grasping by Single-Finger Robot Hand with Soft Tactile Sensor Array

机译:利用具有软触觉传感器阵列的单手指机器人手从触觉时空差分信息获得的棱镜物体形状的分类

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摘要

Our proposal involves classifying cylindrical objects by using soft tactile sensor arrays on a single five-link robotic finger. The front of each link is covered with semicircular silicone rubber with 235 small on-off switches. On-off data from switches obtained when an object is grasped is converted to a spatiotemporal matrix. Eight cells around the contact switch are useful in extracting local spatiotemporal contact physics, so the frequency of the 8-Cell patterns composed of binary data around the switch contacted is obtained for each object and used to form a contact-feature vector. This vector is obtained 10 times of experimental trial, corresponding to each object. Vectors are classified by the Mahalanobis distance for 12 objects - cylinders and regular polygonal prisms - resulting in 14 types of grasping (14 classes). Using 6 dimensional feature vectors, over 95% classification accuracy is obtained for 7 classes derived from 5 objects having one or two types of stable grasping.
机译:我们的建议涉及通过在单个五连杆机械手手指上使用软触觉传感器阵列来对圆柱对象进行分类。每个链接的前部覆盖有半圆形硅橡胶,带有235个小开关。当抓住物体时,来自开关的开关数据被转换为时空矩阵。接触开关周围的八个单元可用于提取局部时空接触物理学,因此,针对每个对象获取由接触开关周围的二进制数据组成的8单元模式的频率,并用于形成接触特征向量。该向量是对应于每个对象的10次实验获得的。向量是根据12个对象(圆柱体和规则多边形棱镜)的Mahalanobis距离进行分类的,从而产生14种类型的抓取(14类)。使用6维特征向量,对于来自5种具有一种或两种稳定抓握类型的对象的7类,可以获得超过95%的分类精度。

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