SEARCH
ISTC-CC NEWSLETTER
RESEARCH HIGHLIGHTS
Ling Liu's SC13 paper "Large Graph Processing Without the Overhead" featured by HPCwire.
ISTC-CC provides a listing of useful benchmarks for cloud computing.
Another list highlighting Open Source Software Releases.
Second GraphLab workshop should be even bigger than the first! GraphLab is a new programming framework for graph-style data analytics.
ISTC-CC Abstract
Continuous Inference of Psychological Stress from
Sensory Measurements Collected in the Natural
Environment
ACM/IEEE International Conference on Information Processing in Sensor Networks (IPSN 2011), Chicago, IL, April 12-14, 2011.
Kurt Plarre*, Andrew Raij**, SyedMonowar Hossain*, Amin Ahsan Ali*, Motohiro Nakajima‡,
Mustafa al'Absi‡, Emre Ertin°, Thomas Kamarck^, Santosh Kumar*,
Marcia Scott#, Daniel Siewiorek†, Asim Smailagic†, Lorentz E.Wittmers, Jr.‡
* University of Memphis
**University of South Florida
‡University of Minnesota Medical School
°The Ohio State University
†Carnegie Mellon University
^University of Pittsburg
#National Institute on Alcohol Abuse and Alcoholism
Repeated exposures to psychological stress can lead to or worsen diseases of slow accumulation such as heart diseases and cancer. The main challenge in addressing the growing epidemic of stress is a lack of robust methods to measure a person's exposure to stress in the natural environment. Periodic self-reports collect only subjective aspects, often miss stress episodes, and impose significant burden on subjects. Physiological sensors provide objective and continuous measures of stress response, but exhibit wide between-person differences and are easily confounded by daily activities (e.g., speaking, physical movements, coffee intake, etc.).
In this paper, we propose, train, and test two models for continuous prediction of stress from physiological measurements captured by unobtrusive, wearable sensors. The first model is a physiological classifier that predicts whether changes in physiology represent stress. Since the effect of stress may persist in the mind longer than its acute effect on physiology, we propose a perceived stress model to predict perception of stress. It uses the output of the physiological classifier to model the accumulation and gradual decay of stress in the mind. To account for wide between-person differences, both models self-calibrate to each subject.
Both models were trained using data collected from 21 subjects in a lab study, where they were exposed to cognitive, physical, and social stressors representative of that experienced in the natural environment. Our physiological classifier achieves 90% accuracy and our perceived stress model achieves a median correlation of 0.72 with self-reported rating. We also evaluate the perceived stress model on data collected from 17 participants in a two-day field study, and find that the average rating of stress obtained from our model has a correlation of 0.71 with that obtained from periodic self-reports.
FULL PAPER: pdf