Abstract:
Sleep quantity affects an individual's personal health. The gold standard of measuring sleep and diagnosing sleep disorders is Polysomnography (PSG). Although PSG is accu...Show MoreMetadata
Abstract:
Sleep quantity affects an individual's personal health. The gold standard of measuring sleep and diagnosing sleep disorders is Polysomnography (PSG). Although PSG is accurate, it is expensive and it lacks portability. A number of wearable devices with embedded sensors have emerged in the recent past as an alternative to PSG for regular sleep monitoring directly by the user. These devices are intrusive and cause discomfort besides being expensive. In this work, we present an algorithm to detect sleep using a smartphone with the help of its inbuilt accelerometer sensor. We present three different approaches to classify raw acceleration data into two states - Sleep and Wake. In the first approach, we take an equation from Kushida's algorithm to process accelerometer data. Henceforth, we call it Kushida's equation. While the second is based on statistical functions, the third is based on Hidden Markov Model (HMM) training. Although all the three approaches are suitable for a phone's resources, each approach demands different amount of resources. While Kushida's equation-based approach demands the least, the HMM training-based approach demands the maximum. We collected data from mobile phone's accelerometer for four subjects for twelve days each. We compare accuracy of sleep detection using each of the three approaches with that of Zeo sensor, which is based on Electroencephalogram (EEG) sensor to detect sleep. EEG is an important modality in PSG. We find that HMM training-based approach is as much as 84% accurate. It is 15% more accurate as compared to Kushida's equation-based approach and 10% more accurate as compared to statistical method-based approach. In order to concisely represent the sleep quality of people, we model their sleep data using HMM. We present an analysis to find out a tradeoff between the amount of training data and the accuracy provided in the modeling of sleep. We find that six days of sleep data is sufficient for accurate modeling. We compare acc...
Date of Conference: 06-10 January 2015
Date Added to IEEE Xplore: 04 May 2015
Electronic ISBN:978-1-4799-8439-8
ISSN Information:
Keywords assist with retrieval of results and provide a means to discovering other relevant content. Learn more.
- IEEE Keywords
- Index Terms
- Sleep Quantity ,
- Sleep Problems ,
- Mobile Phone ,
- Detection Accuracy ,
- Daily Data ,
- Hidden Markov Model ,
- Wearable Devices ,
- Amount Of Training Data ,
- Accelerometer Data ,
- Android Application ,
- Sleep Data ,
- Built-in Sensors ,
- Accelerometer Sensor ,
- Hidden Markov Model Approach ,
- Classification Accuracy ,
- Posterior Probability ,
- Mobile Devices ,
- Circadian Rhythm ,
- Transition Probabilities ,
- Awake State ,
- Days Of Training ,
- Sleep Epochs ,
- Trial-and-error Method ,
- Rapid Eye Movement ,
- Acceleration Values ,
- Non-rapid Eye Movement ,
- Raw Accelerometer Data ,
- Normal Rate ,
- Sleep Apnea
- Author Keywords
Keywords assist with retrieval of results and provide a means to discovering other relevant content. Learn more.
- IEEE Keywords
- Index Terms
- Sleep Quantity ,
- Sleep Problems ,
- Mobile Phone ,
- Detection Accuracy ,
- Daily Data ,
- Hidden Markov Model ,
- Wearable Devices ,
- Amount Of Training Data ,
- Accelerometer Data ,
- Android Application ,
- Sleep Data ,
- Built-in Sensors ,
- Accelerometer Sensor ,
- Hidden Markov Model Approach ,
- Classification Accuracy ,
- Posterior Probability ,
- Mobile Devices ,
- Circadian Rhythm ,
- Transition Probabilities ,
- Awake State ,
- Days Of Training ,
- Sleep Epochs ,
- Trial-and-error Method ,
- Rapid Eye Movement ,
- Acceleration Values ,
- Non-rapid Eye Movement ,
- Raw Accelerometer Data ,
- Normal Rate ,
- Sleep Apnea
- Author Keywords