Title | ContextAlert: Context‐aware alert mode for a mobile phone |
Publication Type | Journal Article |
Year of Publication | 2010 |
Authors | Phithakkitnukoon, S, Dantu, R |
Journal | International Journal of Pervasive Computing and Communications |
Volume | 6 |
Pagination | 1-23 |
Date Published | Sep |
ISSN | 1742-7371 |
Abstract |
Purpose - Mobile computing research has been focused on developing technologies for handheld devices such as mobile phones, notebook computers, and mobile IP. Today, emphasis is increasing on context-aware computing, which aims to build the intelligence into mobile devices to sense and respond to the user's context. The purpose of this paper is to present a context-aware mobile computing model (ContextAlert) that senses the user's context and intelligently configures the mobile phone alert mode accordingly. Design/methodology/approach - The paper proposes a three-step approach in designing the model based on the embedded sensor data (accelerometer, GPS antenna, and microphone) of a G1 Adriod phone. As adaptivity is essential for context-aware computing, within this model a new learning mechanism is presented to maintain a constant adaptivity rate for new learning while keeping the catastrophic forgetting problem minimal. Findings - The model has been evaluated in many aspects using data collected from human subjects. The experiment results show that the proposed model performs well and yields a promising result. Originality/value - This paper is distinguished from other previous papers by: first, using multiple sensors embeded in the mobile phone, which is more realistic for detecting the user's context than having various sensors attached to different parts of user's body; second, by being a novel model that uses sensed contextual information to provide a service that better synchronizes the user's daily life with a context-aware alert mode. With this service, the user can avoid the problems such as forgetting to switch to vibrate mode while in a meeting or a movie theater, and taking the risk of picking up a phone call while driving, and third, being an adaptive learning algorithm that maintains a constant adaptivity rate for new learning while keeping the catastrophic forgetting problem minimal. |
DOI | 10.1108/17427371011084266 |