Scientific Data (Aug 2024)

3D-ARM-Gaze: a public dataset of 3D Arm Reaching Movements with Gaze information in virtual reality

  • Bianca Lento,
  • Effie Segas,
  • Vincent Leconte,
  • Emilie Doat,
  • Frederic Danion,
  • Renaud Péteri,
  • Jenny Benois-Pineau,
  • Aymar de Rugy

DOI
https://doi.org/10.1038/s41597-024-03765-4
Journal volume & issue
Vol. 11, no. 1
pp. 1 – 12

Abstract

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Abstract 3D-ARM-Gaze is a public dataset designed to provide natural arm movements together with visual and gaze information when reaching objects in a wide reachable space from a precisely controlled, comfortably seated posture. Participants were involved in picking and placing objects in various positions and orientations in a virtual environment, whereby a specific procedure maximized the workspace explored while ensuring a consistent seated posture by guiding participants to a predetermined neutral posture via visual feedback from the trunk and shoulders. These experimental settings enabled to capture natural arm movements with high median success rates (>98% objects reached) and minimal compensatory movements. The dataset regroups more than 2.5 million samples recorded from 20 healthy participants performing 14 000 single pick-and-place movements (700 per participant). While initially designed to explore novel prosthesis control strategies based on natural eye-hand and arm coordination, this dataset will also be useful to researchers interested in core sensorimotor control, humanoid robotics, human-robot interactions, as well as for the development and testing of associated solutions in gaze-guided computer vision.