4.6 Article

Modulation Spectral Signal Representation for Quality Measurement and Enhancement of Wearable Device Data: A Technical Note

期刊

SENSORS
卷 22, 期 12, 页码 -

出版社

MDPI
DOI: 10.3390/s22124579

关键词

modulation spectrum; wearable devices; quality measurement; signal enhancement; feature engineering

资金

  1. Natural Sciences and Engineering Research Council of Canada (NSERC) [RGPIN-2016-04175]

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This passage introduces the background and applications of wearable devices, and proposes a signal processing representation. This representation can improve data quality, enhance the robustness of signal feature extraction, and be used for disease detection. The article provides an overview of multiple applications developed by the authors over the past decade, along with experimental results and comparisons with state-of-the-art benchmark methods. Open-source software is showcased, aiming to develop new applications. Finally, possible future research directions are discussed.
Wearable devices are burgeoning, and applications across numerous verticals are emerging, including human performance monitoring, at-home patient monitoring, and health tracking, to name a few. Off-the-shelf wearables have been developed with focus on portability, usability, and low-cost. As such, when deployed in highly ecological settings, wearable data can be corrupted by artifacts and by missing data, thus severely hampering performance. In this technical note, we overview a signal processing representation called the modulation spectrum. The representation quantifies the rate-of-change of different spectral magnitude components and is shown to separate signal from noise, thus allowing for improved quality measurement, quality enhancement, and noise-robust feature extraction, as well as for disease characterization. We provide an overview of numerous applications developed by the authors over the last decade spanning different wearable modalities and list the results obtained from experimental results alongside comparisons with various state-of-the-art benchmark methods. Open-source software is showcased with the hope that new applications can be developed. We conclude with a discussion on possible future research directions, such as context awareness, signal compression, and improved input representations for deep learning algorithms.

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