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Published April 2013 | public
Book Section - Chapter

A Fresh Perspective: Learning to Sparsify for Detection in Massive Noisy Sensor Networks

Abstract

Can one trade sensor quality for quantity? While larger networks with greater sensor density promise to allow us to use noisier sensors yet measure subtler phenomena, aggregating data and designing decision rules is challenging. Motivated by dense, participatory seismic networks, we seek efficient aggregation methods for event detection. We propose to perform aggregation by sparsification: roughly, a sparsifying basis is a linear transformation that aggregates measurements from groups of sensors that tend to co-activate, and each event is observed by only a few groups of sensors. We show how a simple class of sparsifying bases provably improves detection with noisy binary sensors, even when only qualitative information about the network is available. We then describe how detection can be further improved by learning a better sparsifying basis from network observations or simulations. Learning can be done offline, and makes use of powerful off-the-shelf optimization packages. Our approach outperforms state of the art detectors on real measurements from seismic networks with hundreds of sensors, and on simulated epidemics in the Gnutella P2P communication network.

Additional Information

Copyright 2013 ACM. The authors would like to thank their Caltech collaborators working on the Community Seismic Network project: Prof. Robert Clayton and Dr. Richard Guy of Geophysics; Prof. Thomas Heaton, Dr. Monica Kohler, and Ming-Hei Cheng from Earthquake Engineering; Prof. Mani Chandy and Michael Olson from Computer Science; Dr. Julian Bunn, Dr. Michael Aivazis, and Leif Strand from the Center for Advanced Computing Research. Special thanks to Prof. Robert Clayton and NodalSeismic Inc. for the Long Beach array data set and Prof. Masumi Yamada and NIED for the Japan data set. This research is supported in part by a grant from the Betty and Gordon Moore Foundation, by NSF award CNS0932392 and ERC StG 307036.

Additional details

Created:
August 19, 2023
Modified:
October 23, 2023