Distributed Detection in Sensor Networks with Limited Range Multi-Modal Sensors
E. Ermis, V. Saligrama

TL;DR
This paper develops a scalable distributed detection method for sensor networks with limited-range multi-modal sensors, utilizing false discovery rate control and robust algorithms to handle signal attenuation and interference.
Contribution
It introduces a novel distributed detection approach based on FDR and BH procedures for multi-modal sensors, with scalable communication and robustness to interference.
Findings
Communication complexity scales linearly with nearby sensors
Method is robust to finite signal attenuation and interference
Distributed detection performance degrades gracefully with interference
Abstract
We consider a multi-object detection problem over a sensor network (SNET) with limited range multi-modal sensors. Limited range sensing environment arises in a sensing field prone to signal attenuation and path losses. The general problem complements the widely considered decentralized detection problem where all sensors observe the same object. In this paper we develop a distributed detection approach based on recent development of the false discovery rate (FDR) and the associated BH test procedure. The BH procedure is based on rank ordering of scalar test statistics. We first develop scalar test statistics for multidimensional data to handle multi-modal sensor observations and establish its optimality in terms of the BH procedure. We then propose a distributed algorithm in the ideal case of infinite attenuation for identification of sensors that are in the immediate vicinity of an…
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Taxonomy
TopicsDistributed Sensor Networks and Detection Algorithms · Target Tracking and Data Fusion in Sensor Networks · Advanced Statistical Process Monitoring
