摘要 : Currently, Human Activity Recognition (HAR) applications need a large volume of data to be able to generalize to new users and environments. However, the availability of labeled data is usually limited and the process of recording... 展开
作者 | Marcos Lupión Federico Cruciani Ian Cleland Chris Nugent Pilar M. Ortigosa |
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作者单位 | |
页码/总页数 | 2350-2361 / 12 |
语种/中图分类号 | 英语 / R318 |
关键词 | Synthetic data Generative adversarial networks Human activity recognition Data models Training Generators Data augmentation |
DOI | 10.1109/JBHI.2024.3364910 |
馆藏号 | IELEP0391 |