2023
DOI: 10.3390/rs15205019
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Automatic Detection of VLF Tweek Signals Based on the YOLO Model

Wei Xu,
Wenchen Ma,
Shiwei Wang
et al.

Abstract: Tweek signals are a special type of VLF (very low frequency) pulse, originally produced by lightning discharge, which becomes dispersive after repetitive bounces within the waveguide between the Earth’s surface and lower ionosphere. As such, tweek signals carry critical information about the region near the reflection height of the VLF waves, namely the D-region ionosphere. Although tweek measurements have been widely utilized in studies of the D-region ionosphere and lightning discharge, few statistical studi… Show more

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Cited by 2 publications
(2 citation statements)
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“…Li et al [29] divide the entire signal frequency band into broadband segments, obtain time-frequency maps using short-time Fourier transform, and propose a CNN-based broadband signal detection method, successfully detecting and recognizing six types of signals. Additionally, Xu [34] introduces a deep learning method based on YOLO to automatically and accurately pick out tweek signals from VLF measurements. The aforementioned deep-learning-based methods typically require time-domain IQ sequences or their transformed counterparts, such as time-frequency spectrograms, as inputs to deep neural networks.…”
Section: Deep-learning-based Signal Detectionmentioning
confidence: 99%
“…Li et al [29] divide the entire signal frequency band into broadband segments, obtain time-frequency maps using short-time Fourier transform, and propose a CNN-based broadband signal detection method, successfully detecting and recognizing six types of signals. Additionally, Xu [34] introduces a deep learning method based on YOLO to automatically and accurately pick out tweek signals from VLF measurements. The aforementioned deep-learning-based methods typically require time-domain IQ sequences or their transformed counterparts, such as time-frequency spectrograms, as inputs to deep neural networks.…”
Section: Deep-learning-based Signal Detectionmentioning
confidence: 99%
“…The mean average precision (mAP) represents the average of precision computed at various recall levels, serving as a comprehensive metric for model evaluation. The F1, the harmonic mean of precision and recall, is employed to holistically assess the model's accuracy and stability, providing a balanced view of the model performance [55,56].…”
Section: Experimental Environment and Assessment Indicatorsmentioning
confidence: 99%