Department of Electrical, Computer and Biomedical Engineering, Ryerson University, Toronto, ON M5B 2K3, Canada.
Sensors (Basel). 2018 Sep 6;18(9):2966. doi: 10.3390/s18092966.
Actigraphs for personalized health and fitness monitoring is a trending niche market and fit aptly in the Internet of Medical Things (IoMT) paradigm. Conventionally, actigraphy is acquired and digitized using standard low pass filtering and quantization techniques. High sampling frequencies and quantization resolution of various actigraphs can lead to memory leakage and unwanted battery usage. Our systematic investigation on different types of actigraphy signals yields that lower levels of quantization are sufficient for acquiring and storing vital movement information while ensuring an increase in SNR, higher space savings, and in faster time. The objective of this study is to propose a low-level signal encoding method which could improve data acquisition and storage in actigraphs, as well as enhance signal clarity for pattern classification. To further verify this study, we have used a machine learning approach which suggests that signal encoding also improves pattern recognition accuracy. Our experiments indicate that signal encoding at the source results in an increase in SNR (signal-to-noise ratio) by at least 50⁻90%, coupled with a bit rate reduction by 50⁻80%, and an overall space savings in the range of 68⁻92%, depending on the type of actigraph and application used in our study. Consistent improvements by lowering the quantization factor also indicates that a 3-bit encoding of actigraphy data retains most prominent movement information, and also results in an increase of the pattern recognition accuracy by at least 10%.
用于个性化健康和健身监测的活动记录仪是一个热门的利基市场,非常适合物联网 (IoMT) 范式。传统上,使用标准低通滤波和量化技术获取和数字化活动记录仪数据。各种活动记录仪的高采样频率和量化分辨率可能导致内存泄漏和不必要的电池使用。我们对不同类型的活动记录仪信号进行了系统研究,结果表明,在确保 SNR 提高、更高的空间节省和更快的时间的情况下,较低的量化水平足以获取和存储重要的运动信息。本研究的目的是提出一种低水平信号编码方法,该方法可以改进活动记录仪中的数据采集和存储,并增强信号清晰度以进行模式分类。为了进一步验证本研究,我们使用了机器学习方法,该方法表明信号编码还可以提高模式识别准确性。我们的实验表明,在源处进行信号编码可将 SNR(信噪比)提高至少 50-90%,同时将比特率降低 50-80%,并且根据我们研究中使用的活动记录仪类型和应用,总体空间节省范围为 68-92%。降低量化因子也可带来一致的改进,表明活动记录仪数据的 3 位编码保留了最主要的运动信息,并且还可将模式识别准确性提高至少 10%。