A Robust Method Based on Deep Learning for Compressive Spectrum Sensing
Abstract
:1. Introduction
2. System Model
2.1. Compressive Sampling
2.2. Compressed Signal Reconstruction
2.3. Wideband Spectrum Sensing
3. The Proposed CSS Method
3.1. Beista-Net Architecture
- Module: This module corresponds to Equation (4) and is used to generate the instantaneous reconstruction result . Note that is actually the gradient of the data-fidelity term . To improve the reconstruction performance and increase its capacity, we permit the step size to vary during iterations. The input to this layer is , and the output is defined as
- Module: The network expansion diagram of the module is shown in Figure 4. First, this module extracts the BSF of the wideband spectrum signals by the BSFE-Block. Then, it enhances these features by the CA-Block. Finally, it maps the enhanced signals back to the original dimensions by the IBSFE-Block. The CA-Block transforms the captured features into corresponding coefficients and multiplies them with their original data to obtain the enhanced signals. The output of the feature enhancement module is
3.2. BSWSS-Net Architecture
3.3. Training Methodology
4. Datasets and Performance Metrics
4.1. Two Datasets
4.2. Performance Metrics
5. Experiment Results
5.1. BEISTA-Net
5.1.1. Reconstruction Accuracy
5.1.2. Complexity Analysis of Reconstruction Algorithms
5.2. BSWSS-Net
5.2.1. Sense Accuracy
5.2.2. Complexity Analysis of WSS Algorithms
5.3. Joint CSS Method
6. Conclusions
Author Contributions
Funding
Institutional Review Board Statement
Informed Consent Statement
Data Availability Statement
Conflicts of Interest
References
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Layer | Filter | Stride | Padding | |
---|---|---|---|---|
Convolutional Pooling Layer | 4 | 2 | 1 | |
8 | 2 | 3 | ||
12 | 2 | 5 | ||
16 | 2 | 7 | ||
4 | 4 | 0 | ||
8 | 2 | 3 | ||
4 | 4 | 0 | ||
Layer | Out features | |||
Fully Connected Layer | 256 | |||
Algorithm | # of FLOPs | # of Learnable Parameters | Execution Time (ms) | Video Memory Usage (MB) |
---|---|---|---|---|
ISTADR-Net | 64 | |||
R-ADMM | ||||
ISTA-Net | ||||
BEISTA-Net |
Dataset | Algorithm | # of FLOPs | # Learnable Parameters | Execution Time (ms) | Video Memory Usage (MB) |
---|---|---|---|---|---|
NR dataset | DeepSense | ||||
ParalellCNN | |||||
CNNWSS-Net | |||||
BSWSS-Net | |||||
TVWS dataset | DeepSense | ||||
ParalellCNN | |||||
CNNWSS-Net | |||||
BSWSS-Net |
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Zeng, H.; Yu, Y.; Liu, G.; Wu, Y. A Robust Method Based on Deep Learning for Compressive Spectrum Sensing. Sensors 2025, 25, 2187. https://doi.org/10.3390/s25072187
Zeng H, Yu Y, Liu G, Wu Y. A Robust Method Based on Deep Learning for Compressive Spectrum Sensing. Sensors. 2025; 25(7):2187. https://doi.org/10.3390/s25072187
Chicago/Turabian StyleZeng, Haoye, Yantao Yu, Guojin Liu, and Yucheng Wu. 2025. "A Robust Method Based on Deep Learning for Compressive Spectrum Sensing" Sensors 25, no. 7: 2187. https://doi.org/10.3390/s25072187
APA StyleZeng, H., Yu, Y., Liu, G., & Wu, Y. (2025). A Robust Method Based on Deep Learning for Compressive Spectrum Sensing. Sensors, 25(7), 2187. https://doi.org/10.3390/s25072187