Source detection via multi-label classification
Radio source detection through conventional algorithms has been unreliable when trying to solve for large number of sources in the presence of low SINR and less number of snapshots. We address this by reformulating source detection as a multi-class classification problem solved using deep learning f...
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Zusammenfassung: | Radio source detection through conventional algorithms has been unreliable
when trying to solve for large number of sources in the presence of low SINR
and less number of snapshots. We address this by reformulating source detection
as a multi-class classification problem solved using deep learning frameworks.
Incoming waveforms are sampled using a centrosymmetric linear array with
omni-directional elements and the normalized upper triangle of the
autocorrelation matrix is extracted as the input feature to a modified
convolutional neural network with uni-dimensional filters, trained to detect
the sources in the presence of both uncorrelated and correlated signals. Two
detection algorithms are introduced and referred to as CNNDetector and
RadioNet, and subsequently benchmarked against the conventional source
detection algorithms. By including preprocessing in forward backward spatial
smoothing, RadioNet can also resolve the number of uncorrelated sources in the
presence of correlated paths. Finally, the algorithms are stress tested under
challenging operational conditions and extensive evaluations are presented
showing the efficacy and contributions of the introduced predictive models. |
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DOI: | 10.48550/arxiv.2209.13553 |