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Liquids Identification and Manipulation Via Digitally Fabricated Impedance Sensors

Junyi Zhu, Young Joong Lee, Yiyue Luo, Tianyu Xu, Chao Liu, Daniela Rus, Stefanie Mueller, Wojciech Matusik

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Abstract

Despite recent exponential advancements in com- puter vision and reinforcement learning, it remains challeng- ing for robots to interact with liquids. These challenges are particularly pronounced due to the limitations imposed by opaque containers, transparent liquids, fine-grained splashes, and visual obstructions arising from the robot’s own manip- ulation activities. Yet, there exists a substantial opportunity for robotics to excel in liquid identification and manipulation, given its potential role in chemical handling in laboratories and various manufacturing sectors such as pharmaceuticals or beverages. In this work, we present a novel approach for liquid class identification and state estimation leveraging electrical impedance sensing. We design and mount a digitally embroidered electrode array to a commercial robot gripper. Coupled with a customized impedance sensing board, we collect data on liquid manipulation with a swept frequency sensing mode and a frequency-specific impedance measuring mode. Our developed learning-based model achieves an accuracy of 93.33% in classifying 9 different types of liquids (8 liquids + air), and 97.65% in estimating the liquid state. We investigate the effectiveness of our system with a series of ablation studies. These findings highlight our work as a promising solution for enhancing robotic manipulation in liquid-related tasks.

Index terms

Perception for Grasping and Manipulation Grippers and Other End-Effectors Intelligent and Flexible Manufacturing