Research Article
Optimal Time-Resource Allocation for Activity-Detection via Multimodal Sensing
@INPROCEEDINGS{10.4108/ICST.BODYNETS2009.6030, author={Gautam Thatte and Viktor Rozgic and Ming Li and Sabyasachi Ghosh and Urbashi Mitra and Shri Narayanan and Murali Annavaram and Donna Spruijt-Metz}, title={Optimal Time-Resource Allocation for Activity-Detection via Multimodal Sensing}, proceedings={4th International ICST Conference on Body Area Networks}, publisher={ICST}, proceedings_a={BODYNETS}, year={2010}, month={5}, keywords={}, doi={10.4108/ICST.BODYNETS2009.6030} }
- Gautam Thatte
Viktor Rozgic
Ming Li
Sabyasachi Ghosh
Urbashi Mitra
Shri Narayanan
Murali Annavaram
Donna Spruijt-Metz
Year: 2010
Optimal Time-Resource Allocation for Activity-Detection via Multimodal Sensing
BODYNETS
ICST
DOI: 10.4108/ICST.BODYNETS2009.6030
Abstract
The optimal allocation of measurements for activity-level de- tection in a wireless body area network (WBAN) for health- monitoring applications is considered. The WBAN with heterogeneous sensors is deployed in a simple star topol- ogy with the fusion center receiving a fixed number of mea- surements from the sensors; the number of measurements allocated to each sensor is optimized to minimize the prob- ability of detection error at the fusion center. An analysis of the two-sensor case with binary hypotheses is presented. Since the number of measurements is an integer, an exhaus- tive search (grid search) is traditionally employed to de- termine the optimal allocation of measurements. However, such a search is computationally expensive. To this end, an alternate continuous-valued vector optimization is derived which yields approximately optimal allocations which can be found with lower complexity. Numerical case studies based on experimental data for different key activity-states are presented. It is observed that the Kullback-Leibler (KL) distances between the distributions associated with the hy- potheses dominate the optimal allocation of measurements.