Towards Outdoor Electromagnetic Field Exposure Mapping Generation Using Conditional GANs
Abstract
:1. Introduction
- Generating a new simulated dataset called “LilleExposureMap”, which consists of EMF exposure maps in Lille, France.
- Develop the generator and discriminator for the proposed EMGAN utilizing the deep convolutional structure and auto-encoders analogy to learn about signal propagation and calculate the map of EMF exposure.
2. Related Work
3. Dataset and Simulator
4. The Proposed EMGAN Model
4.1. Input and Output Data
4.2. Network Architecture
4.2.1. U-Net Generator
- Using a kernel size of and a stride of 1, two convolutional layers are applied in succession. The input layer uses tensors of a size of , which represent a three-dimensional sensor map picture. This results in new dimensions with 16 channels and raises the feature map’s channel count.
- The rectified linear unit (ReLU) is the activation function that is being used. This function enables us to take only positive values after convolution operation.
- A max-pooling layer connects previous layers. This layer downsamples the feature map by taking the biggest value in each patch of each feature map. This creates new dimensions of .
4.2.2. Discriminator
4.3. Loss Functions
5. Results
5.1. Training Set-Up
5.2. Evaluation Metrics
5.3. Visual Analysis
5.4. Quantified Analysis
6. Conclusions
Author Contributions
Funding
Institutional Review Board Statement
Informed Consent Statement
Data Availability Statement
Acknowledgments
Conflicts of Interest
References
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Parameters | Value |
---|---|
Total number of images | 6006 |
Input samples | 2500 |
Test set | 503 |
Optimizer | ADAM |
Learning rate | |
Batch size | 2 |
Decay rate | |
Epochs | 4000 |
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Mallik, M.; Tesfay, A.A.; Allaert, B.; Kassi, R.; Egea-Lopez, E.; Molina-Garcia-Pardo, J.-M.; Wiart, J.; Gaillot, D.P.; Clavier, L. Towards Outdoor Electromagnetic Field Exposure Mapping Generation Using Conditional GANs. Sensors 2022, 22, 9643. https://doi.org/10.3390/s22249643
Mallik M, Tesfay AA, Allaert B, Kassi R, Egea-Lopez E, Molina-Garcia-Pardo J-M, Wiart J, Gaillot DP, Clavier L. Towards Outdoor Electromagnetic Field Exposure Mapping Generation Using Conditional GANs. Sensors. 2022; 22(24):9643. https://doi.org/10.3390/s22249643
Chicago/Turabian StyleMallik, Mohammed, Angesom Ataklity Tesfay, Benjamin Allaert, Redha Kassi, Esteban Egea-Lopez, Jose-Maria Molina-Garcia-Pardo, Joe Wiart, Davy P. Gaillot, and Laurent Clavier. 2022. "Towards Outdoor Electromagnetic Field Exposure Mapping Generation Using Conditional GANs" Sensors 22, no. 24: 9643. https://doi.org/10.3390/s22249643
APA StyleMallik, M., Tesfay, A. A., Allaert, B., Kassi, R., Egea-Lopez, E., Molina-Garcia-Pardo, J. -M., Wiart, J., Gaillot, D. P., & Clavier, L. (2022). Towards Outdoor Electromagnetic Field Exposure Mapping Generation Using Conditional GANs. Sensors, 22(24), 9643. https://doi.org/10.3390/s22249643