Edit resource "Sensing meets mobile social networks: the design, implementation and evaluation of the cenceme application" Accepted
Changes: 1
-
Update Sensing Meets Mobile Social Networks: The Design, Implementation and Evaluation of the CenceMe Application
- Title
-
- Unchanged
- Sensing Meets Mobile Social Networks: The Design, Implementation and Evaluation of the CenceMe Application
- At edit time
- Sensing meets mobile social networks: the design, implementation and evaluation of the cenceme application
- Type
-
- Unchanged
- Paper
- At edit time
- Paper
- Created
-
- Unchanged
- 2008-11
- At edit time
- 2008-11
- Description
-
- Unchanged
- We present the design, implementation, evaluation, and user ex periences of the CenceMe application, which represents the first system that combines the inference of the presence of individuals using off-the-shelf, sensor-enabled mobile phones with sharing of this information through social networking applications such as Facebook and MySpace. We discuss the system challenges for the development of software on the Nokia N95 mobile phone. We present the design and tradeoffs of split-level classification, whereby personal sensing presence (e.g., walking, in conversation, at the gym) is derived from classifiers which execute in part on the phones and in part on the backend servers to achieve scalable inference. We report performance measurements that characterize the computational requirements of the software and the energy consumption of the CenceMe phone client.
- At edit time
- We present the design, implementation, evaluation, and user ex periences of theCenceMe application, which represents the first system that combines the inference of the presence of individuals using off-the-shelf, sensor-enabled mobile phones with sharing of this information through social networking applications such as Facebook and MySpace. We discuss the system challenges for the development of software on the Nokia N95 mobile phone. We present the design and tradeoffs of split-level classification, whereby personal sensing presence (e.g., walking, in conversation, at the gym) is derived from classifiers which execute in part on the phones and in part on the backend servers to achieve scalable inference. We report performance measurements that characterize the computational requirements of the software and the energy consumption of the CenceMe phone client.
- Link
-
- Unchanged
- http://portal.acm.org/citation.cfm?doid=1460412.1460445
- At edit time
- http://portal.acm.org/citation.cfm?doid=1460412.1460445
- Identifier
-
- Unchanged
- ISBN: 9781595939906, DOI: 10.1145/1460412.1460445
- At edit time
- ISBN: 9781595939906, DOI: 10.1145/1460412.1460445