触觉刺激对自主范畴形成的软形态加工

Luca Scimeca, P. Maiolino, F. Iida
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引用次数: 15

摘要

传感器形态学是触觉传感技术的一个基本方面。设计选择诱导刺激物进行形态加工,改变被触摸物体的感官知觉,影响后期加工阶段的推理。我们开发了一个框架来分析过滤后的传感器响应,并观察相应的触觉信息变化。我们通过将电容式触觉传感器集成到平面末端执行器中,并创建三个不同厚度(3mm, 6mm和10mm)的软硅基滤波器来测试形态学处理对触觉刺激的影响。我们把末端执行器装到机械臂上。我们控制手臂,以便对4个物体施加校准的力,并检索触觉图像。我们通过使用主成分分析和K-Means聚类创建了一个无监督推理过程。我们使用该过程将感知对象分为两类,并观察不同的软滤波器对聚类结果的影响。带有3mm软滤波器的传感器响应允许边缘成为方差最大的特征(由pca捕获),并诱导边缘物体的关联。使用较厚的软滤波器时,关联会发生变化,使用10mm滤波器时,对于不同伸长的物体,传感器响应结果更加多样化。我们表明,聚类本质上是由传感器的形态驱动的,机器人对世界的理解也会随之变化。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Soft morphological processing of tactile stimuli for autonomous category formation
Sensor morphology is a fundamental aspect of tactile sensing technology. Design choices induce stimuli to be morphologically processed, changing the sensory perception of the touched objects and affecting inference at a later processing stage. We develop a framework to analyze the filtered sensor response and observe the correspondent change in tactile information. We test the morphological processing effects on the tactile stimuli by integrating a capacitive tactile sensor into a flat end-effector and creating three soft silicon-based filters with varying thickness (3mm, 6mm and 10mm). We incorporate the end-effector onto a robotic arm. We control the arm in order to apply a calibrated force onto 4 objects, and retrieve tactile images. We create an unsupervised inference process through the use of Principal Component Analysis and K-Means Clustering. We use the process to group the sensed objects into 2 classes and observe how different soft filters affect the clustering results. The sensor response with the 3mm soft filter allows for edges to be the feature with most variance (captured by PC A) and induces the association of edged objects. With thicker soft filters the associations change, and with a 10mm filter the sensor response results more diverse for objects with different elongation. We show that the clustering is intrinsically driven by the morphology of the sensor and that the robot's world understanding changes according to it.
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