Spectrum Awareness at the Edge: Modulation Classification using Smartphones

2019 IEEE International Symposium on Dynamic Spectrum Access Networks (DySPAN)(2019)

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摘要
As spectrum becomes crowded and spread over wide ranges, there is a growing need for emcient spectrum management techniques that need minimal, or even better, no human intervention. Identifying and classifying wireless signals of interest through deep learning is a first step, albeit with many practical pitfalls in porting laboratory-tested methods into the field. Towards this aim, this paper proposes using Android smartphones with TensorFlow Lite as an edge computing device that can run GPU-trained deep Convolutional Neural Networks (CNNs) for modulation classification. Our approach intelligently identifies the SNR region of the signal with high reliability (over 99%) and chooses grouping of modulation labels that can be predicted with high (over 95%) detection probability. We demonstrate that while there are no significant differences between the GPU and smartphone in terms of classification accuracy, the latter takes much less time (down to 1 870x), memory space (3 1 of the original size), and consumes minimal power, which makes our approach ideal for ubiquitous smartphone-based signal classification.
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关键词
TensorFlow Lite,Modulation Classification,Low SNR,Smartphone,Edge Computing
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