Designing a Context-Sensitive Context Detection Service for Mobile Devices Chen, Tiffany Yu-Han; Sivaraman, Anirudh; Das, Somak; Ravindranath, Lenin; Balakrishnan, Hari This paper describes the design, implementation, and evaluation of Amoeba, a context-sensitive context detection service for mobile devices. Amoeba exports an API that allows a client to express interest in one or more context types (activity, indoor/outdoor, and entry/exit to/from named regions), subscribe to specific modes within each context (e.g., "walking" or "running", but no other activity), and specify a response latency (i.e., how often the client is notified). Each context has a detector that returns its estimate of the mode. The detectors take both the desired subscriptions and the current context detection into account, adjusting both the types of sensors and the sampling rates to achieve high accuracy and low energy consumption. We have implemented Amoeba on Android. Experiments with Amoeba on 45+ hours of data show that our activity detector achieves an accuracy between 92% and 99%, outperforming previous proposals like UCLA* (59%), EEMSS (82%) and SociableSense (72%), while consuming 4 to 6× less energy.
from Computer Science and Artificial Intelligence Lab (CSAIL) http://ift.tt/1Leov76
Home » Computer Science and Artificial Intelligence Lab (CSAIL) » Designing a Context-Sensitive Context Detection Service for Mobile Devices
samedi 26 septembre 2015
Designing a Context-Sensitive Context Detection Service for Mobile Devices
lainnya dari Computer Science and Artificial Intelligence CSAIL, Computer Science and Artificial Intelligence Lab (CSAIL)
Ditulis Oleh : Unknown // 21:33
Kategori:
Computer Science and Artificial Intelligence Lab (CSAIL)
Inscription à :
Publier les commentaires (Atom)
0 commentaires:
Enregistrer un commentaire