A Novel 3D ArcSAR Sensing System Applied to Unmanned Ground Vehicles
Abstract
:1. Introduction
- The 3D ArcSAR method is proposed for reconstructing panoramic 3D images with rotational SAR and direction estimation techniques. This method effectively addresses the limitations of existing automotive corner radar systems, including shortcomings in altitude direction sensing, azimuthal resolution, and consistency. The 3D ArcSAR sensing system achieves panoramic 3D imaging with only one radar and one rotation scan. Therefore, it reduces the number and complexity of devices required and can better meet the sensing needs of unmanned ground vehicles.
- A resolution algorithm based on IAA was designed specifically for 3D ArcSAR. This algorithm overcomes the limitation of receiving only a single snapshot signal per angle. We analyze the errors in altitude angle estimation for both the proposed algorithm and conventional algorithms under varying conditions, such as target spacing and SNR. The proposed algorithm has superior resolution in the case of single snap, small antenna arrays, and an unknown number of targets compared to other existing methods.
- The 3D ArcSAR prototype is designed based on a millimeter-wave radar system and a rotating mechanical system. The radar system employs a low-cost, readily available commercial off-the-shelf (COTS) radar, facilitating easy deployment. The rotating mechanical system is designed to adapt to different scenes, with adjustable rotation speed and arm length. Additionally, it can be remotely controlled by a computer to facilitate experiments. The 3D ArcSAR prototype validates the superior resolution accuracy performance of the proposed algorithm and can be further utilized for experiments in various scenes in the future.
2. Three-Dimensional ArcSAR and Signal Processing
2.1. Signal Model and Geometry Model
2.1.1. 2D Structure of ArcSAR
2.1.2. Direction Estimation with Multiple Receivers
2.2. Panoramic Image Formation by the Back Projection Algorithm
- Distance compression.
- 2.
- Data interpolation resampling.
- 3.
- Compensating for delayed phase.
- 4.
- Phase-coherent accumulation.
2.3. IAA-Based Angle Estimation in Altitude Direction
- Determine the spatial coordinates of the targets and extract the signals from multiple receivers corresponding to these specific locations.
- Employ IAA to estimate the altitude angle at the designated target locations.
- Generate sets of SAR images of the 2D scenes through the application of BPA to process the received signal from each antenna. Obtain a complete 3D panoramic image combined with the height dimension information obtained by IAA.
3. Parametric Analysis in Simulations
3.1. Imaging Simulation
3.1.1. Imaging of 2D ArcSAR
3.1.2. Imaging of 3D ArcSAR
3.2. Performance Analysis of Different Algorithms Influenced by Different Factors
3.2.1. Target Spacing
3.2.2. SNR
4. Imaging Analysis in Experiments
4.1. The Experimental System
4.2. Two-Dimensional Experimental Results of ArcSAR
4.3. Three-Dimensional ArcSAR Experiments
5. Conclusions
- Environmental Monitoring: The 3D ArcSAR system’s panoramic imaging capability can be leveraged for monitoring large-scale environmental areas, such as forests, coastal regions, and agricultural landscapes. It can provide valuable insights into vegetation growth, land use changes, and environmental dynamics.
- Disaster Management: During natural disasters such as floods, earthquakes, and landslides, the 3D ArcSAR system can efficiently gather information on the affected areas and aid in disaster response and management efforts. The system’s ability to acquire 3D images in real-time can be crucial for assessing the extent of damage and planning relief operations.
- Climate Change Studies: The system’s capacity to monitor vast areas with high accuracy enables data collection for climate change studies. It can be used to monitor ice caps, glaciers, and polar regions, providing critical data for understanding climate change patterns.
Author Contributions
Funding
Data Availability Statement
Conflicts of Interest
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SNR | Initial Frequency | Signal Bandwidth | FM Slope | AD Frequency | Turntable Arm Length | Beamwidth |
---|---|---|---|---|---|---|
20dB | 77.12 GHz | 1.365 GHz | 30 MHz/us | 25.5 MHz | 0.41 m | 70° |
Quality Parameters | Point Target Q1 | Point Target Q2 |
---|---|---|
Radial resolution (m) | 0.1588 | 0.1576 |
Radial PSLR (dB) | −31.6067 | −31.5194 |
Radial ISLR (dB) | −30.7331 | −30.6482 |
Azimuth resolution (°) | 0.3433 | 0.3467 |
Azimuth PSLR (dB) | −31.4269 | −28.2715 |
Azimuth ISLR (dB) | −21.5856 | −18.3847 |
Initial Frequency | FM Slope | AD Frequency | Pulse Width | Turntable Arm Length | Beamwidth | Rotational Speed |
---|---|---|---|---|---|---|
77 GHz | 30 MHz/us | 22.5 MHz | 45.5 us | 0.41 m | 70° | 12°/s |
Quality Parameters | Point Target Q1 | Point Target Q2 |
---|---|---|
Azimuth resolution (°) | 0.3833 | 0.3690 |
Azimuth PSLR (dB) | −25.7565 | −26.0115 |
Azimuth ISLR (dB) | −11.3737 | −11.1613 |
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Hua, Y.; Wang, J.; Feng, D.; Huang, X. A Novel 3D ArcSAR Sensing System Applied to Unmanned Ground Vehicles. Remote Sens. 2023, 15, 4089. https://doi.org/10.3390/rs15164089
Hua Y, Wang J, Feng D, Huang X. A Novel 3D ArcSAR Sensing System Applied to Unmanned Ground Vehicles. Remote Sensing. 2023; 15(16):4089. https://doi.org/10.3390/rs15164089
Chicago/Turabian StyleHua, Yangsheng, Jian Wang, Dong Feng, and Xiaotao Huang. 2023. "A Novel 3D ArcSAR Sensing System Applied to Unmanned Ground Vehicles" Remote Sensing 15, no. 16: 4089. https://doi.org/10.3390/rs15164089
APA StyleHua, Y., Wang, J., Feng, D., & Huang, X. (2023). A Novel 3D ArcSAR Sensing System Applied to Unmanned Ground Vehicles. Remote Sensing, 15(16), 4089. https://doi.org/10.3390/rs15164089