Figure 1.
The observation geometry schematic of the unmanned-aerial-vehicle (UAV)-based differential synthetic aperture radar (SAR) tomography (D-TomoSAR). Where (a) is the schematic of the observation geometry, and (b) is the schematic of the spectrum sampling. A and represent two points with layover problem.
Figure 1.
The observation geometry schematic of the unmanned-aerial-vehicle (UAV)-based differential synthetic aperture radar (SAR) tomography (D-TomoSAR). Where (a) is the schematic of the observation geometry, and (b) is the schematic of the spectrum sampling. A and represent two points with layover problem.
Figure 2.
The curves of (a) the required baselines of the P-band SAR under different elevation resolution, and (b) the spatial coherence coefficients under different baselines.
Figure 2.
The curves of (a) the required baselines of the P-band SAR under different elevation resolution, and (b) the spatial coherence coefficients under different baselines.
Figure 3.
The schematic of the UAV-based D-TomoSAR under the proposed multi-master (MM) model. Where (a) is the schematic of the observation geometry, and (b) is the schematic of the spectrum sampling. A and represent two points with layover problem.
Figure 3.
The schematic of the UAV-based D-TomoSAR under the proposed multi-master (MM) model. Where (a) is the schematic of the observation geometry, and (b) is the schematic of the spectrum sampling. A and represent two points with layover problem.
Figure 4.
The contrast curves of (a) the number of baselines and (b) the average coherence coefficient (ACC) between the single-master (SM) (the blue one) and the MM (the red one) models.
Figure 4.
The contrast curves of (a) the number of baselines and (b) the average coherence coefficient (ACC) between the single-master (SM) (the blue one) and the MM (the red one) models.
Figure 5.
The processing flow of the proposed MM D-TomoSAR approach.
Figure 5.
The processing flow of the proposed MM D-TomoSAR approach.
Figure 6.
The schematic of the 2D baseline distribution optimization processing through sign reassignment. Where (a) shows the original baseline vectors after normalization and sorting, (b–f) represents the step-by-step baseline sign adjusting processing. Among them, the 1st, 2nd, and 5th baselines are not subject to sign reverse, but the signs of the 3rd and 4th ones are reversed. The gray dotted arrows represent the current accumulated vectors, and their modulus is continuously reduced as the baseline sign adjusts.
Figure 6.
The schematic of the 2D baseline distribution optimization processing through sign reassignment. Where (a) shows the original baseline vectors after normalization and sorting, (b–f) represents the step-by-step baseline sign adjusting processing. Among them, the 1st, 2nd, and 5th baselines are not subject to sign reverse, but the signs of the 3rd and 4th ones are reversed. The gray dotted arrows represent the current accumulated vectors, and their modulus is continuously reduced as the baseline sign adjusts.
Figure 7.
The schematic of the clustering-based outliers elimination processing, where (a) is a local window and (b,c) are the estimated points with certain elevations and deformation velocities before and after the 2D discrimination threshold setting, respectively. (d) is the number of intra-cluster points (NICP) of the estimated points of the central pixel. (e) is the estimated points of the central pixel after outliers elimination.
Figure 7.
The schematic of the clustering-based outliers elimination processing, where (a) is a local window and (b,c) are the estimated points with certain elevations and deformation velocities before and after the 2D discrimination threshold setting, respectively. (d) is the number of intra-cluster points (NICP) of the estimated points of the central pixel. (e) is the estimated points of the central pixel after outliers elimination.
Figure 8.
The comparison of the spatial and temporal baselines, where (a) shows the time-altitude coordinates of all simulated UAV flights, and (b,c) are the spatial and temporal baselines based on the SM and MM models, respectively. The red circles in (c) exactly represent the baselines in (b).
Figure 8.
The comparison of the spatial and temporal baselines, where (a) shows the time-altitude coordinates of all simulated UAV flights, and (b,c) are the spatial and temporal baselines based on the SM and MM models, respectively. The red circles in (c) exactly represent the baselines in (b).
Figure 9.
The comparison of the estimated elevation-velocity planes, where (a–d) are the two-dimensional (2D) planes of Set-1 simulation based on Method-1, -2, -3, and -4, respectively, and (e–h) are the estimated 2D planes of Set-2 simulation corresponding to these methods. (i–l) are the estimated 2D planes of the Set-3 simulation. The centers of the dashed boxes are exactly the actual elevation-velocity coordinates of the simulated targets.
Figure 9.
The comparison of the estimated elevation-velocity planes, where (a–d) are the two-dimensional (2D) planes of Set-1 simulation based on Method-1, -2, -3, and -4, respectively, and (e–h) are the estimated 2D planes of Set-2 simulation corresponding to these methods. (i–l) are the estimated 2D planes of the Set-3 simulation. The centers of the dashed boxes are exactly the actual elevation-velocity coordinates of the simulated targets.
Figure 10.
The experimental conditions include (a) the reference digital elevation model (DEM) (acquired by TanDEM-X) of the observation area, which is located in Huang Songyu township, Pinggu district, Beijing, (b) the actual photo of the eight-rotor UAV, (c) UAV flight tracks, (d) the observation time of the all UAV flights, (e) the optical image of the observation area with longitude and latitude information, (f) Reflector-1 (with elevation-direction deformation), (g) Reflector-2 (fixed on the ground), (h) the 10th SAR image with the local magnifications of (i) Reflector-1, and (j) Reflector-2.
Figure 10.
The experimental conditions include (a) the reference digital elevation model (DEM) (acquired by TanDEM-X) of the observation area, which is located in Huang Songyu township, Pinggu district, Beijing, (b) the actual photo of the eight-rotor UAV, (c) UAV flight tracks, (d) the observation time of the all UAV flights, (e) the optical image of the observation area with longitude and latitude information, (f) Reflector-1 (with elevation-direction deformation), (g) Reflector-2 (fixed on the ground), (h) the 10th SAR image with the local magnifications of (i) Reflector-1, and (j) Reflector-2.
Figure 11.
The comparison of the spatial and temporal baselines, where (a) shows the time–altitude coordinates of the UAV flights. (b,c) are the obtained spatial and temporal baselines based on the SM and MM models, respectively, and the red circles in (c) exactly represent the baselines in (b).
Figure 11.
The comparison of the spatial and temporal baselines, where (a) shows the time–altitude coordinates of the UAV flights. (b,c) are the obtained spatial and temporal baselines based on the SM and MM models, respectively, and the red circles in (c) exactly represent the baselines in (b).
Figure 12.
The obtained ACC maps based on the (a) SM and (b) MM models.
Figure 12.
The obtained ACC maps based on the (a) SM and (b) MM models.
Figure 13.
The comparison of the estimated elevations and deformation velocities, where (a,e,i,m) are the estimated elevations based on Method-1, -2, -3 and -4, respectively. (c,g,k,o) are the estimated deformation velocities of Method-1, -2, -3 and -4, respectively. (b,f,j,n) are the local magnifications of the elevations in the black boxes. (d,h,l,p) are the corresponding local magnifications of the velocities.
Figure 13.
The comparison of the estimated elevations and deformation velocities, where (a,e,i,m) are the estimated elevations based on Method-1, -2, -3 and -4, respectively. (c,g,k,o) are the estimated deformation velocities of Method-1, -2, -3 and -4, respectively. (b,f,j,n) are the local magnifications of the elevations in the black boxes. (d,h,l,p) are the corresponding local magnifications of the velocities.
Figure 14.
The comparison of the estimated elevation-velocity planes, where (a–d) are the estimated 2D planes of Reflector-1 based on Method-1, -2, -3 and -4, respectively. (e–h) are the corresponding estimated 2D planes of Reflector-2. The centers of the dashed boxes are exactly the actual elevation-velocity coordinates of the reflectors.
Figure 14.
The comparison of the estimated elevation-velocity planes, where (a–d) are the estimated 2D planes of Reflector-1 based on Method-1, -2, -3 and -4, respectively. (e–h) are the corresponding estimated 2D planes of Reflector-2. The centers of the dashed boxes are exactly the actual elevation-velocity coordinates of the reflectors.
Figure 15.
The D-TomoSAR (a) three-dimensional (3D) and (b) four-dimensional (4D) point clouds, where the 3D and 4D point clouds are colored by elevations and deformation velocities, respectively. (c,d) are the fusion images of the point clouds and the optical image.
Figure 15.
The D-TomoSAR (a) three-dimensional (3D) and (b) four-dimensional (4D) point clouds, where the 3D and 4D point clouds are colored by elevations and deformation velocities, respectively. (c,d) are the fusion images of the point clouds and the optical image.
Table 1.
The system parameters of the simulation.
Table 1.
The system parameters of the simulation.
Parameter | Value | Unit |
---|
Working Frequency | 400 | MHz |
View Angle | 65 | ° |
Flight Number | 26 | - |
Flight Altitude | 100–200 | m |
Altitude Interval | 4 | m |
SNR | 5 | dB |
Table 2.
The parameters of the simulated targets.
Table 2.
The parameters of the simulated targets.
| Set-1 | Set-2 | Set-3 |
---|
| Point-1 | Point-2 | Point-1 | Point-2 | Point-1 | Point-2 |
---|
Elevation | 0 m | 5 m | 0 m | 0 m | 0 m | 5 m |
Velocity | 0 mm/h | 0 mm/h | 0 mm/h | 10 mm/h | 0 mm/h | 10 mm/h |
Table 3.
The comparison methods used in the computer simulation (and the UAV-SAR experiment).
Table 3.
The comparison methods used in the computer simulation (and the UAV-SAR experiment).
| Method-1 | Method-2 | Method-3 | Method-4 |
---|
Signal Model | SM | SM | MM | MM |
Algorithm | TSVD | ISTA | TSVD | ISTA |
Table 4.
The mainlobe energy percentage (MEP) of different methods in the simulation.
Table 4.
The mainlobe energy percentage (MEP) of different methods in the simulation.
Methods | Method-1 | Method-2 | Method-3 | Method-4 |
---|
Simulation Set-1 | 5.25% | 71.77% | 7.96% | 100% |
Simulation Set-2 | 5.63% | 75.08% | 9.29% | 97.23% |
Simulation Set-3 | 5.87% | 45.56% | 9.32% | 90.83% |
Table 5.
The evaluated elevation and deformation velocity accuracies in the simulation.
Table 5.
The evaluated elevation and deformation velocity accuracies in the simulation.
| Method-1 | Method-2 | Method-3 | Method-4 |
---|
Elevation Accuracy | 0.35 m | 0.17 m | 0.28 m | 0.17 m |
Velocity Accuracy | 0.47 mm/h | 0.33 mm/h | 0.35 mm/h | 0 mm/h |
Table 6.
The main parameters of the P-band UAV-SAR system in this experment.
Table 6.
The main parameters of the P-band UAV-SAR system in this experment.
Parameter | Value | Unit |
---|
Working Frequency | 400 | MHz |
Resoultion | | m |
Polarization | HH | – |
View Angle | 65 | ° |
Flight Number | 19 | – |
Flight Altitude | 90∼180 | m |
Altitude Interval | 5 | m |
Table 7.
The evaluated MEP of different methods based on the reflectors in the UAV-SAR experiment.
Table 7.
The evaluated MEP of different methods based on the reflectors in the UAV-SAR experiment.
Methods | Method-1 | Method-2 | Method-3 | Method-4 |
---|
Reflector-1 | 5.81% | 81.50% | 9.32% | 100% |
Reflector-2 | 5.42% | 100% | 9.19% | 100% |
Table 8.
The evaluated elevation and deformation velocity accuracies in the UAV-SAR experiment.
Table 8.
The evaluated elevation and deformation velocity accuracies in the UAV-SAR experiment.
| Method-1 | Method-2 | Method-3 | Method-4 |
---|
Elevation Accuracy | 3.25 m | 2.97 m | 1.52 m | 1.45 m |
Velocity Accuracy | 0.81 mm/h | 0.69 mm/h | 0.19 mm/h | 0.17 mm/h |