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dataset

Data for Deep-learning models of the ascending proprioceptive pathway are subject to illusions

Perez Rotondo, Adriana  
•
Pigeon, Sebastian
•
David, Florian  
Show more
March 31, 2025
Zenodo

Here we provide the data to run the code provided in github. 

  1. Data required to train and test the models in data.zip ~37 GB when uncompressed. This includes:  cleaned_smooth: pre-processed data from FLAG3D and PCR dataset, the elbow flexion datasets used to evaluate the models' performance (EF3D) and effect of vibrations (ES3D). These datasets contain the muscle kinematics used, togther with the spindle models to generate the inputs to the models with spindle inputs.  osim: the opensim model used to generate the muscle kinematics for all datasets. spindles: inputs and outputs to the 21 trained models in the paper form the ES3D dataset, used to test tendon vibrations on the models
  2. Data to reproduce the figures in the paper in data_for_figs.zip ~5.1 GB when uncompressed.
  3. Weights for the 21 trained models analyzed in the paper in trained_models.zip ~13 MB when uncompressed.
  • Details
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Type
dataset
DOI
10.5281/zenodo.15111808
ACOUA ID

cfbbe4bd-b9c2-4ccf-af9c-0c7cea80a06c

Author(s)
Perez Rotondo, Adriana  

EPFL

Pigeon, Sebastian

University of Toronto

David, Florian  

EPFL

Simos, Merkourios  

EPFL

Blanke, Olaf  

EPFL

Mathis, Alexander  

EPFL

Date Issued

2025-03-31

Version

1

Publisher

Zenodo

License

CC BY

Subjects

Deep Learning

•

Muscle Spindles

•

Perception

•

Proprioception

•

Task-driven learning

•

Illusions

•

Kinesthesis

•

Illusions/physiology

•

Kinesthesis/physiology

EPFL units
UPAMATHIS  
LNCO  
FunderFunding(s)Grant NOGrant URL

Swiss National Science Foundation

A theory-driven approach to understanding the neural circuits of proprioception

212516

RelationRelated workURL/DOI

IsSupplementTo

Deep-learning models of the ascending proprioceptive pathway are subject to illusions

https://infoscience.epfl.ch/handle/20.500.14299/250708

IsSupplementedBy

https://github.com/amathislab/ProprioceptiveIllusions

IsVersionOf

10.5281/zenodo.15111807
Available on Infoscience
May 27, 2025
Use this identifier to reference this record
https://infoscience.epfl.ch/handle/20.500.14299/250712
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