Gowda Harshavardhana T, Kaul Neha, Carrasco Carlos, Battraw Marcus, Amer Safa, Kotwal Saniya, Lam Selena, McNaughton Zachary, Rahimi Ferdous, Shehabi Sana, Schofield Jonathon, Miller Lee M
Department of Electrical and Computer Engineering, University of California, Davis, 95616, California, USA.
Center for Mind and Brain, University of California, Davis, 95616, California, USA.
Sci Data. 2025 Mar 27;12(1):517. doi: 10.1038/s41597-025-04825-z.
Upper limb based neuromuscular interfaces aim to provide a seamless way for humans to interact with technology. Among noninvasive interfaces, surface electromyogram (EMG) signals hold significant promise. However, their sensitivity to physiological and anatomical factors remains poorly understood, raising questions about how these factors influence gesture decoding across individuals or groups. To facilitate the study of signal distribution shifts across individuals or groups of individuals, we present a dataset of upper limb EMG signals and physiological measures from 91 demographically diverse adults. Participants were selected to represent a range of ages (18 to 92 years) and body mass indices (healthy, overweight, and obese). The dataset also includes measures such as skin hydration and elasticity, which may affect EMG signals. This dataset provides a basis to study demographic confounds in EMG signals and serves as a benchmark to test the development of fair and unbiased algorithms that enable accurate hand gesture decoding across demographically diverse subjects. Additionally, we validate the quality of the collected data using state-of-the-art gesture decoding techniques.
基于上肢的神经肌肉接口旨在为人类与技术交互提供一种无缝方式。在非侵入性接口中,表面肌电图(EMG)信号具有巨大潜力。然而,人们对其对生理和解剖因素的敏感性仍知之甚少,这引发了关于这些因素如何影响个体或群体间手势解码的问题。为便于研究个体或个体群体间信号分布的变化,我们展示了一个来自91名不同年龄段成年人的上肢EMG信号和生理测量数据集。参与者的选择代表了一系列年龄(18至92岁)和身体质量指数(健康、超重和肥胖)。该数据集还包括可能影响EMG信号的皮肤水合作用和弹性等测量指标。这个数据集为研究EMG信号中的人口统计学混杂因素提供了基础,并作为一个基准来测试公平且无偏差算法的开发,这些算法能够在不同人口统计学特征的受试者中实现准确的手势解码。此外,我们使用最先进的手势解码技术验证了所收集数据的质量。