Model-Driven Deep Learning for Distributed Detection with Binary Quantization
Wei Guo, Meng He, Chuan Huang, Hengtao He, Shenghui Song, Jun Zhang,, and Khaled B. Letaief

TL;DR
This paper proposes a model-driven deep learning approach for distributed detection in wireless sensor networks that uses binary quantization to reduce communication costs while maintaining near-optimal detection performance.
Contribution
It introduces a novel DL-based framework that jointly optimizes quantizers and detectors using theoretical bounds and divergence measures, enhancing detection efficiency under resource constraints.
Findings
Achieves near-optimal detection performance with reduced complexity.
Validates the effectiveness of the DL approach through numerical experiments.
Establishes the global optimality of identical local quantizers for maximizing Chernoff information.
Abstract
Within the realm of rapidly advancing wireless sensor networks (WSNs), distributed detection assumes a significant role in various practical applications. However, critical challenge lies in maintaining robust detection performance while operating within the constraints of limited bandwidth and energy resources. This paper introduces a novel approach that combines model-driven deep learning (DL) with binary quantization to strike a balance between communication overhead and detection performance in WSNs. We begin by establishing the lower bound of detection error probability for distributed detection using the maximum a posteriori (MAP) criterion. Furthermore, we prove the global optimality of employing identical local quantizers across sensors, thereby maximizing the corresponding Chernoff information. Subsequently, the paper derives the minimum MAP detection error probability (MAPDEP)…
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Taxonomy
TopicsFault Detection and Control Systems · Neural Networks and Applications · Target Tracking and Data Fusion in Sensor Networks
