Kernel-Based Learning of Decision Fusion in Wireless Sensor Networks
Source: RWSoftware
The problem of decision fusion in wireless sensor networks for distributed detection applications has mainly been considered in scenarios where sensor observations are conditionally independent and both local sensor statistics as well as wireless channel conditions are available for fusion rule design. In this paper, kernel-based learning algorithms for the design of decision fusion rules are presented when no such prior knowledge is available. The fusion center receives a collection of labeled decision vectors from the sensor nodes and employs a discrete version of the method of kernel smoothing which exploits the ordinal nature of local sensor decisions.
| Format: | Size: | 155.94 | |
| Date: | May 2008 |



