Abstract
Synthetic aperture radar (SAR) and interferometric SAR (InSAR) are state-of-the-art radar remote sensing technologies and are very useful for urban remote sensing. The technologies have some very special characteristics compared to optical remote sensing and are especially advantageous in cloudy regions due to the ability of the microwave radar signals used by the current SAR sensors to penetrate clouds. This chapter introduces the basic concepts of SAR, differential InSAR, and multi-temporal InSAR, and their typical applications in urban remote sensing. Examples of applying the various InSAR techniques in generating DEMs and monitoring ground and infrastructure deformation are given. The capabilities and limitations of InSAR techniques in urban remote sensing are briefly discussed.
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1 Synthetic Aperture Radar
A radar (RAdio Detection and Ranging) system typically sends out electromagnetic pulses and receives the pulses scattered back by objects. By precisely determining the time delay and Doppler frequency shift between the emitted and received pulses, a radar system can measure the distance to, and the moving velocity of, an object with respect to the radar. Synthetic-aperture radar (SAR) is a commonly used radar remote sensing technique that achieves finer spatial resolution imaging (i.e., up to meter level or better), in comparison with the real aperture radar, by taking advantage of the movement of the radar antenna along a particular trajectory to mathematically create a virtual radar antenna that has a much larger size than that of the physical antenna. The radar system is usually mounted on an aircraft or a satellite with a side-looking imaging geometry (Fig. 21.1). Most spaceborne SAR antennas are 10–15 m long and result in a ground spatial resolution of 1–20 m by using the SAR principle. Since the first spaceborne SAR satellite was launched in 1978 by the U.S. National Aeronautics and Space Administration (NASA), many SAR satellites have been developed (Table 21.1). Over ten SAR satellites are currently in operation or to be launched in the near future.
A SAR system obtains information on both the intensity and the phase of the returned signal from each ground resolution cell, referred to as pixel. The intensity depends primarily on the roughness and dielectric property of the scattering surface while the phase is determined by the time delay between signal transmission and reception. The signal in a pixel can be represented by
where \(a_{1}\) and \(b_{1}\) are the real and imaginary parts of the complex value; and \(A_{1}\) and \(\varnothing_{1}\) represent the amplitude and phase of the signal.
2 Interferometric Synthetic Aperture Radar
Basic interferometric synthetic aperture radar (InSAR) involves a pair of focused complex SAR images of the same ground area and acquired with the same or similar imaging geometries, often referred to as single look complex (SLC) images. InSAR extracts very useful information from the interferometric combination of the two SAR images separated in space and time. The spatial separation between the two images is termed the spatial baseline, while the temporal separation forms the temporal baseline when the SAR images are acquired from repeat-pass orbits using the same antenna.
After alignment and resampling of the two SAR images into the same geometry, a complex interferogram is generated by coherent cross-multiplication of the two SAR images,
where v represents the signal in a pixel of the interferogram. The phase component of the signal \(\varnothing_{1} - \varnothing_{2}\) gives the phase difference between the SAR images. For a single SAR image, although the phase values appear quite random in space, the difference between the two images offers very useful information (see Fig. 21.2). The phase difference \(\varnothing_{1} - \varnothing_{2}\) can be decomposed into two components,
where \(\lambda\) is the wavelength of the radar signal, R1 and R2 are the slant ranges from the antenna positions to the ground target for two SAR acquisitions, and \(\psi_{{{\text{scat}},1}}\) and \(\psi_{{{\text{scat}},2}}\) are related to the interactions between the radar signal and the ground scatterers. Although the interactions are unpredictable in real cases, the scattering will remain coherent if the spatial and temporal separations between the SAR acquisitions are small. As a consequence, the phase difference is mainly dependent on the range difference R1 – R2 as the interaction phase contributions mostly cancel out.
From a geometry perspective, the interferometric phase can also be defined as:
where \(\varnothing_{{{\text{flat}}}}\) is the flattening phase and is due to the slant range variation with the elevation of the reference surface; \(\varnothing_{{{\text{topo}}}}\) is the phase component resulted from the topography; \(\varnothing_{{{\text{defo}}}}\) is the phase caused by ground surface displacement; \(\varnothing_{{{\text{atm}}}}\) is due to the phase propagation delay when the radar signal travels through the atmosphere; \(\varnothing_{{{\text{orb}}}}\) is related to the phase induced by inaccurate orbit data, and \(\varnothing_{{{\text{noise}}}}\) is the phase caused by the noise. Since the wavelength of the radar signal is normally in the cm range (see Table 21.1), the phase contributions can be measured to an accuracy of mm, i.e., a fraction of the wavelength.
In early applications, radar interferometry was primarily used to map land surface topography, with a comparable accuracy (i.e., meter level) to photogrammetric methods and capability of working under all weather conditions. It was then soon demonstrated that repeat-pass interferometry could measure relative surface displacement, yielding a cm to mm accuracy. InSAR has been used extensively to retrieve ground surface deformation that is related to natural or anthropogenic activities, such as earthquakes (e.g., Fialko 2004), volcano eruption (e.g., Lu and Dzurisin 2014), glacier change (e.g., Goldstein et al. 1993), landslides (e.g., Sun et al. 2015), and land subsidence due to extraction of water or other resources (e.g., Qu et al. 2015). We will briefly introduce below how to use SAR interferometry to produce a ground surface deformation map.
The method of using two SAR images to perform interferometry for deformation mapping is called differential InSAR (DInSAR) (Massonnet and Feigl 1998). Disregarding atmospheric propagation delay and satellite orbit errors, before obtaining a deformation image, the flattening and topographic phase contributions need to be removed from the interferogram,
where \(B_{ \bot }\) is the perpendicular baseline; R is the slant range from the antenna to the ground point; \(\theta\) is the incidence angle of the radar signal; and s and h represents the differences of slant range and elevation with respect to a reference point, respectively. These parameters can be obtained from a SAR system configuration. The operation of removing the flattening phase is called interferogram flattening and the result is a flattened interferogram (see Fig. 21.3b, c). The removal of the topographic phase can be achieved by deploying an external digital elevation model (DEM) and the InSAR imaging geometry to simulate a synthetic interferogram and then subtracting the phase contribution from the flattened interferogram (Massonnet and Feigl 1998). Currently, there are several global DEM datasets generated based on this technique, including results from the Shuttle Radar Topographic Mission (SRTM; Farr et al. 2007) and ALOS Global Digital Surface Model “ALOS World 3D-30m” (AW3D30m; Tadono et al. 2016). Alternatively, the synthetic interferogram can be directly formed from other SAR acquisitions of the same area with short temporal separation and then can be scaled to the spatial baseline of the original interferogram. The combination of the original interferogram with a third or fourth SAR acquisition is called three-pass or four-pass InSAR (Zebker and Rosen 1994), as the approaches use additional SAR images to produce the DEM interferogram that is assumed to solely contain the topographic contribution.
Subtracting flattening and topographic phases from the original interferogram results in a differential interferogram (see Fig. 21.3d). Since atmospheric propagation delay and other systematic errors are neglected at this point, the resulting phase observations can be regarded as the sum of two contributions: (1) the relative ground displacement that occurs during the time interval between the SAR acquisitions, and (2) phase noise due to ground scattering characteristics that are related to the variation of spatial and temporal baselines. The phase noise propagates into the derived displacement map and degrades the quality of the results. To mitigate the noise effect, a low-pass filter can be applied to improve the signal-to-noise ratio (SNR) of the phase measurement, but at the cost of possible image resolution reduction (Goldstein and Werner 1998).
The filtered interferogram contains information mainly on the ground motion. However, it is impossible to directly convert the filtered differential interferogram into a displacement map as the interferometric phase values are modulo \(2\pi\), ranging from \(- \pi \,{\text{to}}\,\pi\). The wrapped phase values require adding the correct multiple of \(2\pi\) to recover the absolute phase values. This procedure is referred to as phase unwrapping. Many different phase unwrapping methods have been proposed, such as the residue cut (Goldstein et al. 1988), least squares (Ghiglia and Romero 1994; Pritt and Shipman 1994), and minimal cost flow methods (Costantini 1998). Each of the methods has its own pros and cons and their performance depends on the noise level, the characteristics of terrain, and other conditions. Once the interferometric phases are unwrapped, the deformation map in the line-of-sight (LOS) direction can be obtained with respect to a reference point. As a summary, the workflow of DInSAR in extracting terrain deformation is shown in Fig. 21.4.
3 Multi-temporal InSAR (MTInSAR)
The effectiveness of the DInSAR approach is limited by several factors including errors in the external DEM that are used to remove the topographic phase, atmospheric propagation delays, phase ramps induced by orbit errors, spatial and temporal decorrelation, and phase unwrapping errors. The limitations have motivated the development of the multi-temporal InSAR (MTInSAR) technique that attempts to tackle the aforementioned problems by deploying a time series of SAR images covering the same area and focusing on scatterers with strong phase stabilities (i.e., persistent scatterers or PS).
After about 20 years of development, three categories of MTInSAR techniques are currently in existence. The first category of methods exploits single master (SM) interferograms and the methods include, for example, persistent scatterers InSAR (PSInSAR; e.g., Ferretti et al. 2001), the Stanford method for persistent scatterers (StaMPS; e.g., Hooper et al. 2004, 2007), and the spatiotemporal unwrapping network method (STUN; e.g., Kampes 2006; Kampes and Hanssen 2004). The second category of methods attempts to extract deformation information from scatterers with moderate phase stabilities (i.e., distributed scatterer or DS), where an interferogram stack is formed from multiple master (MM) interferograms. Examples include the small baseline subset (SBAS) technique (e.g., Berardino et al. 2002; Lanari et al. 2004), coherent point target (CPT; e.g., Mora et al. 2003), and temporally coherent point InSAR (TCPInSAR; e.g., Zhang et al. 2011a, b, 2014; Liang et al. 2019). In the third category, some newly developed techniques make use of all possible interferometric combinations to enhance the phase quality of DS, and then use the PS and the enhanced phase measurements of the DS to estimate the deformation information under the SM interferogram framework. The methods include SqueeSAR (e.g., Ferretti et al. 2011), component extraction and selection SAR (CAESAR; e.g., Fornaro et al. 2015), phase-decomposition-based InSAR (PD-PSInSAR; e.g., Cao et al. 2016), and joint-scatterer InSAR (JSInSAR; e.g., Lv et al. 2014).
The innovations of the MTInSAR techniques are three-fold. First, high-quality coherent points form the foundation of MTInSAR. Methods for identifying such points have been developed based on different criteria, including the amplitude dispersion index (ADI; Ferretti et al. 2001), signal-to-clutter ratio (SCR; Adam et al. 2005), spatial phase stability (Hooper et al. 2004), coherence map (Jiang et al. 2015; Mora et al. 2003), and pixel offsets (Zhang et al. 2011a, b). Second, the various phase contributions need to be modeled according to the relationships between the signals and the phase observations. The contributions can be separated either based on InSAR observation itself (e.g., topographic error, orbital inaccuracy, height-related tropospheric delays; e.g., Zhang et al. 2014; Liang et al. 2019) or external data (e.g., atmospheric delays Jolivet et al. 2014). Finally, ground surface displacement history can be estimated from the function model. The estimation complexity depends on the existence of the phase ambiguities. On the one hand, the phase observations after the spatial unwrapping procedure can be easily solved by least squares. When it is challenging to carry out spatial phase unwrapping, temporal unwrapping can be performed. Typical methods include periodogram method (Ferretti et al. 2001), 3D phase unwrapping (Hooper et al. 2004), integer least squares (Kampes 2006), and least squares with outlier detection (Zhang et al. 2011a, b).
4 Applications in Urban Areas
It can be seen from the above discussion that the main applications of InSAR are in DEM generation and surface deformation mapping. It is often necessary to build 3D models of urban areas for purposes such as environmental modeling and urban planning. Monitoring ground and infrastructure deformation can provide essential information for better management of geohazards such as land subsidence, landslides, and sinkholes, and for ensuring the safety of urban infrastructures such as buildings, bridges, and road surfaces. We will discuss below applications of InSAR in DEM generation, land subsidence measurement, and infrastructure monitoring.
4.1 Construction of Fine Resolution DEM
Mapping urban topography is essential for a variety of scientific and practical applications, such as modeling urban heat island effects, urban landscape design, and urban planning. InSAR techniques can be used to generate DEM products of fine resolution in metropolitan areas. Especially data from the TanDEM-X mission has been used for generating accurate and detailed DEMs that cover the global area with an effective resolution of 6 m (Zhu et al. 2018). Based on the tandem SAR satellites TerraSAR-X and TanDEM-X, the mission performs single-pass SAR interferometry based on advanced algorithms for phase filtering and unwrapping. The single-pass bistatic interferogram has the advantage that the derived interferogram does not suffer from temporal decorrelation and atmospheric artefacts (Rossi and Gernhardt 2013), at the cost of spatial resolution due to phase filtering. Alternatively, by making use of repeat-pass acquisitions with full resolution, the MTInSAR technique can produce accurate urban DEMs with even finer spatial resolution (Perissin and Rocca 2006). Figure 21.5 presents the point cloud of a DEM product over Shenzhen, China. A total of 79 TerraSAR-X images spanning from May 2008 to May 2013 were used to generate the DEM product. The adopted methodology follows the MTInSAR processing framework (Wu et al. 2018), which has the characteristics of limiting atmospheric delays and mitigating decorrelation effects. It can be seen from Fig. 21.5 that the high-rise buildings (i.e., those higher than 100 m) are clearly identified with regular spatial patterns. Figure 21.6 presents more detail of the DEM product, in which the point clouds match well with the 3D model of the buildings in Google Earth, demonstrating the effectiveness of MTInSAR for mapping urban topography.
The InSAR technique is similar to stereophotogrammetry in that both use a pair of images to infer the target elevation. However, InSAR is also like the LiDAR technique as they both use range measurements. Compared to other topographic mapping techniques, the operation cost of InSAR is usually lower.
The weakness of InSAR in mapping urban topography includes specular reflection of signals, signal sidelobe, and geometric distortions of SAR images. Specular reflection of signals occurs when the ground surface is smooth, like a mirror. Little signal is backscattered in this case, leading to weak signal returns and loss of phase information. Sidelobe is caused by strong scatterers that contaminate the phase values of neighboring pixels. The geometric distortions, due to the oblique viewing geometry of SAR systems, have two main issues in urban environments, that is, shadowing and layover. Shadows occur when the radar signals are obscured by buildings or natural terrain, while layover is the result of superposition of multiple scatterers when terrain slope exceeds the radar incidence angle. With the development of advanced InSAR technologies, the effect of geometric distortions can be mitigated to a certain extent. SAR data from different viewing geometries (i.e., ascending and descending orbits) can be used complementarily to reduce the areas affected by shadows. For the layover problem, the elevation and deformation rate of the superimposed scatterers can be separately estimated by extending InSAR measurements into 4D (space–time) space. This operation is called differential SAR tomography (TomoSAR; (e.g., Lombardini 2005; Zhu and Bamler 2010).
4.2 Subsidence Measurement
The MTInSAR technique has enabled extraction of urban-area deformation with unprecedented spatial resolution. Due to the ample persistent scatterers in typical urban environments (e.g., buildings and other man-made structures), the temporal decorrelation effect is largely mitigated (Ferretti et al. 2001). The capability of InSAR in monitoring urban-area deformation has been extensively demonstrated in recent years.
Land subsidence caused by extracting groundwater is one of the emphases (Qu et al. 2015). Many areas in the world suffer from water shortages, especially in areas that are being rapidly urbanized. Figure 21.7 presents the area subsidence due to overuse of groundwater in Beijing. A total of 12 TerraSAR-X images were used to retrieve the subsidence field and its temporal evolution. The deformation results show that the largest deformation rate reaches 1.3 cm/year and the accumulative subsidence is 2.2 cm from 2010 to 2012. The InSAR derived deformation maps provide useful information on the amount and location of groundwater extraction.
Due to a shortage of useable land, many coastal cities reclaim land from the sea to support further urban development. A complex submarine geology can pose challenges for controlling the stability of reclaimed land (Shi et al. 2018). Figure 21.8 presents the rapid subsidence within only nine days over a man-made island. The InSAR technique has become a safe and efficient technique to extract terrain-motion information for analyzing geological stability and managing construction progress.
Subsidence caused by underground construction can be conveniently monitored by InSAR techniques (e.g., Serrano-Juan et al. 2017). Figure 21.9 shows the subsidence areas along subway lines revealed by processing 50 TerraSAR-X images from December 2013 to July 2016. Settlement due to the subway construction poses a potential threat to the surrounding areas. InSAR measurements can be used as input for analyzing the cause of subsidence.
Other land deformation such as that caused by sinkholes and landslides can also be monitored with InSAR. The feasibility of InSAR techniques for such applications depends on the rates of ground subsidence and surface features.
4.3 Monitoring Stability of Infrastructures
Urban infrastructures such as buildings and bridges are essential in supporting the daily lives of urban dwellers. It is important to check the stability of the infrastructures as any structural failure can lead to hazardous consequences. In-situ sensors such as accelerometers and traditional survey methods provide useful information on structural stabilities. It is however expensive to measure a large number of urban structures with these methods. InSAR, in particular MTInSAR, can be used to monitor both ground and structural deformation over a large area. It is therefore very efficient and provides very useful complementary information to the existing techniques (Ma and Lin 2016).
In general, structural displacement observed with InSAR contains both thermal dilation and long-term deformation. Thermal dilation is caused by temperature variation of the measured structures (Crosetto et al. 2015; Qin et al. 2018). Figure 21.10 presents an example of the relationship between structural deformation and temperature for a high-rise building in Hong Kong. The thermal dilation coefficient of a structure depends on its materials.
Figure 21.11 shows two mean deformation velocity maps of road viaducts in Hong Kong, obtained by processing 29 TerraSAR-X images from 2013 to 2014. It can be seen that the deformation rates varied along the longitudinal direction of the roads. Figure 21.12 presents the deformation rate map of Stonecutter Bridge in Hong Kong after removing thermal expansion effects. The deformation rate map shows some clear deforming areas on the bridge deck.
Processing multiple SAR images from a single orbit provides information on the deformation along the line-of-sight only (Gernhardt and Bamler 2012; Schunert and Soergel 2012). By fusing multiple tracks of SAR data, infrastructures can be better observed and different deformation components, for example, the vertical and the horizontal components, can be resolved (e.g., Hu et al. 2014).
5 Summary
We have reviewed the basic concepts of SAR, InSAR, and MTInSAR and their applications in urban environments. InSAR has benefited from the recent advances in spatial resolution and orbit control of spaceborne radar sensors and has become a vital technology in generating DEMs and in monitoring deformation phenomena related to, for example, ground subsidence and instability of infrastructures. InSAR techniques offer several advantages in such applications. For example, they can be applied in all weather conditions. This ability is especially useful in cloudy regions. Spaceborne InSAR technology can easily cover a large ground area with spatial and temporal resolutions hardly matched by any other technologies. InSAR however still has some shortcomings in these and other related applications. Further, research is still necessary to advance technology in terms of developing new SAR sensors, systems, and data processing algorithms. For example, geostationary satellite SAR constellations and P-band SAR sensor systems are currently being investigated. It can be expected that the capability of InSAR technology will be significantly enhanced in the near future.
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Liang, H., Xu, W., Ding, X., Zhang, L., Wu, S. (2021). Urban Sensing with Spaceborne Interferometric Synthetic Aperture Radar. In: Shi, W., Goodchild, M.F., Batty, M., Kwan, MP., Zhang, A. (eds) Urban Informatics. The Urban Book Series. Springer, Singapore. https://doi.org/10.1007/978-981-15-8983-6_21
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