Precise Well-plate Placing Utilizing Contact During Sliding with Tactile-based Pose Estimation for Laboratory Automation
Sameer Pai, Kuniyuki Takahashi, Shimpei Masuda, Naoki Fukaya, Koki, Yamane, Avinash Ummadisingu

TL;DR
This paper presents a tactile-based method for precise placement of micro well-plates onto holders in laboratory automation, addressing pose uncertainty, high accuracy requirements, and holder movement.
Contribution
It introduces a novel contact-based sliding approach combined with tactile pose estimation to improve placement accuracy and robustness in uncertain and dynamic environments.
Findings
Achieved high success rate in well-plate placement tasks.
Demonstrated robustness under noisy pose observations.
Enabled millimeter to sub-millimeter placement accuracy.
Abstract
Micro well-plates are an apparatus commonly used in chemical and biological experiments that are a few centimeters thick and contain wells or divets. In this paper, we aim to solve the task of placing the well-plate onto a well-plate holder (referred to as holder). This task is challenging due to the holder's raised grooves being a few millimeters in height, with a clearance of less than 1 mm between the well-plate and holder, thus requiring precise control during placing. Our placing task has the following challenges: 1) The holder's detected pose is uncertain; 2) the required accuracy is at the millimeter to sub-millimeter level due to the raised groove's shallow height and small clearance; 3) the holder is not fixed to a desk and is susceptible to movement from external forces. To address these challenges, we developed methods including a) using tactile sensors for accurate pose…
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Taxonomy
TopicsSoft Robotics and Applications · Robot Manipulation and Learning · Microfluidic and Capillary Electrophoresis Applications
