Pervasive Lying Posture Tracking
Paratoo Alinia, Ali Samadani, Mladen Milosevic, Hassan Ghasemzadeh,, and Saman Parvaneh

TL;DR
This paper presents a single-sensor, machine learning-based system using accelerometers to accurately detect lying postures, identifying optimal sensor placement and achieving high classification performance.
Contribution
It introduces a comprehensive approach combining deep learning and traditional classifiers with a single accelerometer for in-bed posture detection, evaluating multiple body sites.
Findings
High accuracy in posture detection with F-Score up to 97.8%
Thighs and chest are the most effective sensor locations
Single accelerometer system is viable for pervasive posture monitoring
Abstract
There exist significant gaps in research about how to design efficient in-bed lying posture tracking systems. These gaps can be articulated through several research questions as follows. First, can we design a single-sensor, pervasive, and inexpensive system that can accurately detect lying postures? Second, what computational models are most effective in the accurate detection of lying postures? Finally, what physical configuration of the sensor system is most effective for lying posture tracking? To answer these important research questions, in this article, we propose a comprehensive approach to design a sensor system that uses a single accelerometer along with machine learning algorithms for in-bed lying posture classification. We design two categories of machine learning algorithms based on deep learning and traditional classification with handcrafted features to detect lying…
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