Share your thoughts, 1 month free Claude Pro on usSee more
WorkDL logo mark

Toward Foundation Model for Multivariate Wearable Sensing of Physiological Signals

About

Time-series foundation models excel at tasks like forecasting across diverse data types by leveraging informative waveform representations. Wearable sensing data, however, pose unique challenges due to their variability in patterns and frequency bands, especially for healthcare-related outcomes. The main obstacle lies in crafting generalizable representations that adapt efficiently across heterogeneous sensing configurations and applications. To address this, we propose NormWear, the first multi-modal and ubiquitous foundation model designed to extract generalized and informative representations from wearable sensing data. Specifically, we design a channel-aware attention mechanism with a shared special liaison [CLS] token to detect signal patterns in both intra-sensor and inter-sensors. This helps the model to extract more meaningful information considering both time series themselves and the relationships between input sensors. This helps the model to be widely compatible with various sensors settings. NormWear is pretrained on a diverse set of physiological signals, including PPG, ECG, EEG, GSR, and IMU, from various public datasets. Our model shows exceptional generalizability across 11 public wearable sensing datasets, spanning 18 applications in mental health, body state inference, vital sign estimation, and disease risk evaluation. It consistently outperforms competitive baselines under zero-shot, partial-shot, and full-shot settings, indicating broad applicability in real-world health applications.

Yunfei Luo, Yuliang Chen, Asif Salekin, Tauhidur Rahman• 2024

Related benchmarks

TaskDatasetResultRank
ClassificationDiabetes (test)
Accuracy82.22
49
Activity RecognitionUCIHAR (test)--
43
ClassificationHeart (test)
Accuracy69.15
21
Affect recognitionWESAD (test)
Accuracy80.27
17
Human Activity RecognitionOpportunity Subject-Hold-Out
Accuracy23
14
Human Activity RecognitionUSC-HAD Subject-Hold-Out
Accuracy10
14
Human Activity RecognitionMHealth Subject-Hold-Out
Accuracy8.3
14
Human Activity RecognitionUCI-HAR Subject-Hold-Out
Accuracy17.9
14
Human Activity RecognitionShoaib Subject-Hold-Out
Accuracy15.2
14
Human Activity RecognitionPAMAP2 Subject-Hold-Out
Accuracy9.2
14
Showing 10 of 28 rows

Other info

Follow for update