Audio-based Roughness Sensing and Tactile Feedback for Haptic Perception in Telepresence

Haptic perception is highly important for immersive teleoperation of robots, especially for accomplishing manipulation tasks. We propose a low-cost haptic sensing and rendering system, which is capable of detecting and displaying surface roughness. As the robot fingertip moves across a surface of interest, two microphones capture sound coupled directly through the fingertip and through the air, respectively. A learning-based detector system analyzes the data in real time and gives roughness estimates with both high temporal resolution and low latency. Finally, an audio-based vibrational actuator displays the result to the human operator. We demonstrate the effectiveness of our system through lab experiments and our winning entry in the ANA Avatar XPRIZE competition finals, where briefly trained judges solved a roughness-based selection task even without additional vision feedback. We publish our dataset used for training and evaluation together with our trained models to enable reproducibility of results.

  • Published in:
    IEEE International Conference on Systems
  • Type:
    Inproceedings
  • Authors:
    Pätzold, Bastian; Rochow, Andre; Schreiber, Michael; Memmesheimer, Raphael; Lenz, Christian; Schwarz, Max; Behnke, Sven
  • Year:
    2023

Citation information

Pätzold, Bastian; Rochow, Andre; Schreiber, Michael; Memmesheimer, Raphael; Lenz, Christian; Schwarz, Max; Behnke, Sven: Audio-based Roughness Sensing and Tactile Feedback for Haptic Perception in Telepresence, IEEE International Conference on Systems, 2023, September, https://ais.uni-bonn.de/papers/SMC_2023_Paetzold.pdf, Paetzold.etal.2023a,

Associated Lamarr Researchers

lamarr institute person Behnke Sven - Lamarr Institute for Machine Learning (ML) and Artificial Intelligence (AI)

Prof. Dr. Sven Behnke

Area Chair Embodied AI to the profile