Bandwidth-efficient distributed neural network architectures with application to body sensor networks
Thomas Strypsteen, Alexander Bertrand

TL;DR
This paper presents a methodology for transforming centralized neural networks into distributed, bandwidth-efficient architectures suitable for sensor networks, achieving significant data reduction with minimal accuracy loss.
Contribution
The paper introduces a novel design approach for converting centralized neural networks into distributed architectures optimized for low-bandwidth sensor networks.
Findings
Up to 20x bandwidth reduction with only 2% accuracy loss
Effective dynamic activation of compression paths
Validated on EEG sensor network for motor task classification
Abstract
In this paper, we describe a conceptual design methodology to design distributed neural network architectures that can perform efficient inference within sensor networks with communication bandwidth constraints. The different sensor channels are distributed across multiple sensor devices, which have to exchange data over bandwidth-limited communication channels to solve, e.g., a classification task. Our design methodology starts from a user-defined centralized neural network and transforms it into a distributed architecture in which the channels are distributed over different nodes. The distributed network consists of two parallel branches of which the outputs are fused at the fusion center. The first branch collects classification results from local, node-specific classifiers while the second branch compresses each node's signal and then reconstructs the multi-channel time series for…
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Taxonomy
TopicsEEG and Brain-Computer Interfaces · Neural Networks and Applications · Advanced Memory and Neural Computing
