Vision-Based Support for the Detection and Recognition of Drones with Small Radar Cross Sections
Abstract
:1. Introduction
- To increase drone detection range using 3D k-band radar and visual imaging;
- To build a deep learning technique for detecting and recognizing drones using convolutional neural networks.
2. The Visual-Support Method of Detection
3. K-Band Radar System
The Micro-Doppler Signature
4. Visual Detection System
4.1. The Convolutional Neural Network for Image Recognition
4.2. The Convolutional Neural Network of Visual Imaging
- A convolution with 64 different kernels, each with a stride of size two and a kernel size of 7 × 7, provides us one layer;
- The next layer includes max pooling and a stride size of 2;
- The following convolution consists of three layers: a 1 × 1, 64 kernel, a 3 × 3, 64 kernel, and finally, a 1 × 1, 256 kernel. These three levels were repeated three times, providing us nine layers in this phase;
- The kernel of 1 × 1, 128 is shown next, followed by the kernel of 3 × 3, 128 and finally, the kernel of 1 × 1, 512. We performed this procedure four times for a total of 12 layers;
- Following that, we have a kernel of size 1 × 1, 256, followed by two more kernels of size 3 × 3, 256 and size 1 × 1, 1024; this was repeated six times, providing us a total of 18 layers;
- Then a 1 × 1, 512 kernel was followed by two other kernels of 3 × 3, 512 and 1 × 1, 2048, and this was repeated three times providing us a total of nine layers;
- Then, we performed an average pool, finished it with a fully connected layer of 1000 nodes, and add a softmax function to produce one layer [25].
- A.
- Confusion Matrix (CM)
- B.
- The critical classification metrics are accuracy, recall, precision, and F1 score
5. Performance Evaluation and Results
5.1. Radar Images under Various Environments
5.2. Visual Imaging System Results
6. Conclusions and Future Work
Author Contributions
Funding
Data Availability Statement
Acknowledgments
Conflicts of Interest
References
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Related Works | Problem Statement | Model | Methodology | Findings |
---|---|---|---|---|
[16] | Classification of radar-detected targets | Range-Doppler radar using CNN | DopplerNet: RDRD database with CNN classifier for RDR | The high-accuracy results (99.48%) |
[17] | Misuse and unauthorized intrusion | YOLOv4 DL-CNN with vision aid | A video dataset is introduced to YOLOv4 | More precise and detailed semantic features were extracted by changing the number of CNN layers |
[18] | Detect small and slow UAVs in challenging scenarios, e.g., smoky, foggy, or loud environments | W-band radar with Micro-Doppler analysis | W-band radar n realistic scenarios, including 3D localization, combined with classification by utilizing Micro-Doppler analysis | Small UAS detected the range coverage of several hundred meters |
[19] | Detection of physical characteristics of the drone during communication | Matthan theory | Matthan was prototyped and evaluated using SDR radios in three different real-world environments | High accuracy, precision, and recall, all above 90% at 50 m were achieved. |
[20] | Drone detection of various miniaturization and modification. | CNN with the acoustic signals | 2D feature employed is made of the normalized short-time Fourier transformation (STFT) magnitude. The experiment is conducted in the open environment with DJI Phantom 3 and 4 hovering drone | 98.97% detection rate and 1.28 false alarm |
[21] | Enhance the robustness of micro-Doppler-based classification of drones | A dual band radar classification scheme | PCA is utilized for features extraction, then SVM is used for classification | Accuracy of 100%, 97%, and 92% were achieved for helicopter, quadcopter, and hexacopter, respectively. |
Parameter | Value | Parameter | Value |
---|---|---|---|
Operating Frequency | 24 GHz (K-band) | Peak Power | 10 watts |
Bandwidth | 200 MHz | Signal polarization | Horizontal |
Antenna Gain | 30 dB | P.F.A. | 1 × 10−6 |
Noise Temperature | 800 K | Pulse Width | 7 × 10−5 s |
PRF | 1 kHz | Cutoff range | 5 m |
DJI Phantom | Hexacopter | Birds | |
---|---|---|---|
DJI Phantom | 82.35% | 0 | 17% |
Hexacopter | 0 | 97.06% | 2.94% |
Birds | 5.88% | 5.88% | 88.24% |
Methodology | DL-CNN-NMS | ML-DS | DL-SVC-YOLO | ML-ANN-RCS | ML-FMCW | VSD-CNN-RCS |
---|---|---|---|---|---|---|
Classification accuracy | 68.60 | 97.00 | 65.60 | 98.70 | 62.90 | 71.43 |
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Abdelsamad, S.E.; Abdelteef, M.A.; Elsheikh, O.Y.; Ali, Y.A.; Elsonni, T.; Abdelhaq, M.; Alsaqour, R.; Saeed, R.A. Vision-Based Support for the Detection and Recognition of Drones with Small Radar Cross Sections. Electronics 2023, 12, 2235. https://doi.org/10.3390/electronics12102235
Abdelsamad SE, Abdelteef MA, Elsheikh OY, Ali YA, Elsonni T, Abdelhaq M, Alsaqour R, Saeed RA. Vision-Based Support for the Detection and Recognition of Drones with Small Radar Cross Sections. Electronics. 2023; 12(10):2235. https://doi.org/10.3390/electronics12102235
Chicago/Turabian StyleAbdelsamad, Safa E., Mohammed A. Abdelteef, Othman Y. Elsheikh, Yomna A. Ali, Tarik Elsonni, Maha Abdelhaq, Raed Alsaqour, and Rashid A. Saeed. 2023. "Vision-Based Support for the Detection and Recognition of Drones with Small Radar Cross Sections" Electronics 12, no. 10: 2235. https://doi.org/10.3390/electronics12102235
APA StyleAbdelsamad, S. E., Abdelteef, M. A., Elsheikh, O. Y., Ali, Y. A., Elsonni, T., Abdelhaq, M., Alsaqour, R., & Saeed, R. A. (2023). Vision-Based Support for the Detection and Recognition of Drones with Small Radar Cross Sections. Electronics, 12(10), 2235. https://doi.org/10.3390/electronics12102235