4.7 Article Data Paper

Surface electromyogram, kinematic, and kinetic dataset of lower limb walking for movement intent recognition

Journal

SCIENTIFIC DATA
Volume 10, Issue 1, Pages -

Publisher

NATURE PORTFOLIO
DOI: 10.1038/s41597-023-02263-3

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This study presents a novel lower limb motion dataset (SIAT-LLMD) comprising sEMG, kinematic, and kinetic data with corresponding labels. The dataset was analyzed to verify synchronization and reproducibility, and effective data processing codes are provided. This dataset can be used to explore novel algorithms and models for characterizing lower limb movements.
Surface electromyogram (sEMG) offers a rich set of motor information for decoding limb motion intention that serves as a control input to Intelligent human-machine synergy systems (IHMSS). Despite growing interest in IHMSS, the current publicly available datasets are limited and can hardly meet the growing demands of researchers. This study presents a novel lower limb motion dataset (designated as SIAT-LLMD), comprising sEMG, kinematic, and kinetic data with corresponding labels acquired from 40 healthy humans during 16 movements. The kinematic and kinetic data were collected using a motion capture system and six-dimensional force platforms and processed using OpenSim software. The sEMG data were recorded using nine wireless sensors placed on the subjects' thigh and calf muscles on the left limb. Besides, SIAT-LLMD provides labels to classify the different movements and different gait phases. Analysis of the dataset verified the synchronization and reproducibility, and codes for effective data processing are provided. The proposed dataset can serve as a new resource for exploring novel algorithms and models for characterizing lower limb movements.

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