Demo Abstract: Demonstrating Principal Component Aggregation for Distributed Spatial Pattern Recognition
 
Demo Abstract: Demonstrating Principal Component Aggregation for Distributed Spatial Pattern Recognition 
 
YannAel Le Borgne, Ann Nowe, Kris Steenhaut, Gianluca Bontempi
 
Abstract 

The Principal Component Aggregation has recently been proposed as a versatile distributed information extraction technique for sensor networks. This demonstration illustrates its use for a network-level pattern recognition task. Four different patterns, or events, may be sensed by light measurements of a network of 27 nodes. The sensor measurements are fused on the fly along a routing tree up to the base station, where the monitored pattern is recognized by a prediction algorithm.