Optimal Preprocessing for Joint Detection and Classification of Wireless Communication Signals in Congested Spectrum Using Computer Vision Methods
The joint detection and classification of RF signals has been a critical problem in the field of wideband RF spectrum sensing. Recent advancements in deep learning models have revolutionized this field, remarkably through the application of state-of-the-art computer vision algorithms such as YOLO (Y...
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Zusammenfassung: | The joint detection and classification of RF signals has been a critical
problem in the field of wideband RF spectrum sensing. Recent advancements in
deep learning models have revolutionized this field, remarkably through the
application of state-of-the-art computer vision algorithms such as YOLO (You
Only Look Once) and DETR (Detection Transformer) to the spectrogram images.
This paper focuses on optimizing the preprocessing stage to enhance the
performance of these computer vision models. Specifically, we investigated the
generation of training spectrograms via the classical Short-Time Fourier
Transform (STFT) approach, examining four classical STFT parameters: FFT size,
window type, window length, and overlapping ratio. Our study aims to maximize
the mean average precision (mAP) scores of YOLOv10 models in detecting and
classifying various digital modulation signals within a congested spectrum
environment. Firstly, our results reveal that additional zero padding in FFT
does not enhance detection and classification accuracy and introduces
unnecessary computational cost. Secondly, our results indicated that there
exists an optimal window size that balances the trade-offs between and the time
and frequency resolution, with performance losses of approximately 10% and 30%
if the window size is four or eight times off from the optimal. Thirdly,
regarding the choice of window functions, the Hamming window yields optimal
performance, with non-optimal windows resulting in up to a 10% accuracy loss.
Finally, we found a 10% accuracy score performance gap between using 10% and
90% overlap. These findings highlight the potential for significant performance
improvements through optimized spectrogram parameters when applying computer
vision models to the problem of wideband RF spectrum sensing. |
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DOI: | 10.48550/arxiv.2408.06545 |