Probabilistic Differentiable Filters Enable Ubiquitous Robot Control with Smartwatches
- Resource Type
- Working Paper
- Authors
- Weigend, Fabian C; Liu, Xiao; Amor, Heni Ben
- Source
- Subject
- Computer Science - Robotics
- Language
Ubiquitous robot control and human-robot collaboration using smart devices poses a challenging problem primarily due to strict accuracy requirements and sparse information. This paper presents a novel approach that incorporates a probabilistic differentiable filter, specifically the Differentiable Ensemble Kalman Filter (DEnKF), to facilitate robot control solely using Inertial Measurement Units (IMUs) from a smartwatch and a smartphone. The implemented system is cost-effective and achieves accurate estimation of the human pose state. Experiment results from human-robot handover tasks underscore that smart devices allow versatile and ubiquitous robot control. The code for this paper is available at https://github.com/ir-lab/DEnKF and https://github.com/wearable-motion-capture.
Comment: DiffPropRob Workshop IROS 2023 (Oral)