Neyman-Pearson Detection of a Gaussian Source using Dumb Wireless Sensors
Pascal Bianchi, Jeremie Jakubowicz, Francois Roueff

TL;DR
This paper analyzes the asymptotic performance of Neyman-Pearson detection of Gaussian signals in wireless sensor networks using random and orthogonal precoders, providing explicit error exponents and a practical orthogonal strategy.
Contribution
It introduces a large-system analysis of Neyman-Pearson detection with precoded sensor data, deriving error exponents and proposing the Principal Frequencies Strategy for efficient detection.
Findings
Miss probability converges exponentially to zero with large sensors and samples.
The Principal Frequencies Strategy achieves optimal error exponent among orthogonal precoders.
A low-complexity test performs asymptotically as well as the Neyman-Pearson test.
Abstract
We investigate the performance of the Neyman-Pearson detection of a stationary Gaussian process in noise, using a large wireless sensor network (WSN). In our model, each sensor compresses its observation sequence using a linear precoder. The final decision is taken by a fusion center (FC) based on the compressed information. Two families of precoders are studied: random iid precoders and orthogonal precoders. We analyse their performance in the regime where both the number of sensors k and the number of samples n per sensor tend to infinity at the same rate, that is, k/n tends to c in (0, 1). Contributions are as follows. 1) Using results of random matrix theory and on large Toeplitz matrices, it is proved that the miss probability of the Neyman-Pearson detector converges exponentially to zero, when the above families of precoders are used. Closed form expressions of the corresponding…
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Taxonomy
TopicsDistributed Sensor Networks and Detection Algorithms · Target Tracking and Data Fusion in Sensor Networks · Microwave Imaging and Scattering Analysis
