Abstract :
Recently the interest about the services in the ubiquitous environment has increased. These kinds of services are focusing on the context of the userpsilas activities, location or environment. There were many studies about recognizing these contexts using various sensory resources. To recognize human activity, many of them used an accelerometer, which shows good accuracy to recognize the userpsilas activities of movements, but they did not recognize stable activities which can be classified by the userpsilas emotion and inferred by physiological sensors. In this paper, we exploit multiple sensor signals to recognize to userpsilas activity. As Armband includes an accelerometer and physiological sensors, we used them with a fuzzy Bayesian network for the continuous sensor data. The fuzzy membership function uses three stages differed by the distribution of each sensor data. Experiments in the activity recognition accuracy, have conducted by the combination of the usages of accelerometers and physiological signals. For the result, the total accuracy appears to be 74.4% for the activities including dynamic activities and stable activities, using the physiological signals and one 2-axis accelerometer. When we use only the physiological signals the accuracy is 60.9%, and when we use the 2 axis accelerometer the accuracy is 44.2%. We show that using physiological signals with accelerometer is more efficient in recognizing activities.
Keywords :
accelerometers; belief networks; biology computing; biosensors; pattern recognition; physiology; ubiquitous computing; accelerometer; fuzzy Bayesian network; human activities recognition; physiological sensors; physiological signals; ubiquitous environment; Accelerometers; Bayesian methods; Cameras; Classification tree analysis; Decision trees; Emotion recognition; Global Positioning System; Humans; Intelligent sensors; Pattern recognition;