Title :
Space-Time Signal Processing for Distributed Pattern Detection in Sensor Networks
Author :
Paffenroth, R. ; du Toit, Philip ; Nong, R. ; Scharf, Louis ; Jayasumana, Anura P. ; Bandara, V.
Author_Institution :
Numerica Corp., Loveland, CO, USA
Abstract :
A theory and algorithm for detecting and classifying weak, distributed patterns in network data is presented. The patterns we consider are anomalous temporal correlations between signals recorded at sensor nodes in a network. We use robust matrix completion and second order analysis to detect distributed patterns that are not discernible at the level of individual sensors. When viewed independently, the data at each node cannot provide a definitive determination of the underlying pattern, but when fused with data from across the network the relevant patterns emerge. We are specifically interested in detecting weak patterns in computer networks where the nodes (terminals, routers, servers, etc.) are sensors that provide measurements (of packet rates, user activity, central processing unit usage, etc.). The approach is applicable to many other types of sensor networks including wireless networks, mobile sensor networks, and social networks where correlated phenomena are of interest.
Keywords :
computer networks; matrix algebra; signal detection; wireless sensor networks; anomalous temporal correlations; central processing unit usage; computer networks; distributed pattern classification; distributed pattern detection; mobile sensor networks; robust matrix completion; second-order analysis; sensor networks; sensor nodes; social networks; space-time signal processing; user activity; wireless networks; Algorithm design and analysis; Correlation; Matrix decomposition; Noise; Signal processing algorithms; Sparse matrices; $ell _{1}$ methods; anomaly detection; matrix completion; pattern detection; robust principal component analysis;
Journal_Title :
Selected Topics in Signal Processing, IEEE Journal of
DOI :
10.1109/JSTSP.2012.2237381