Evaluation of P-Band SAR Tomography for Mapping Tropical Forest Vertical Backscatter and Tree Height

: Low-frequency tomographic synthetic aperture radar (TomoSAR) techniques provide an opportunity for quantifying the dynamics of dense tropical forest vertical structures. Here, we compare the performance of different TomoSAR processing, Back-projection (BP), Capon beamforming (CB), and MUltiple SIgnal Classiﬁcation (MUSIC), and compensation techniques for estimating forest height (FH) and forest vertical proﬁle from the backscattered echoes. The study also examines how polarimetric measurements in linear, compact, hybrid, and dual circular modes inﬂuence parameter estimation. The tomographic analysis was carried out using P-band data acquired over the Paracou study site in French Guiana, and the quantitative evaluation was performed using LiDAR-based canopy height measurements taken during the 2009 TropiSAR campaign. Our results show that the relative root mean squared error (RMSE) of height was less than 10%, with negligible systematic errors across the range, with Capon and MUSIC performing better for height estimates. Radiometric compensation, such as slope correction, does not improve tree height estimation. Further, we compare and analyze the impact of the compensation approach on forest vertical proﬁles and tomographic metrics and the integrated backscattered power. It is observed that radiometric compensation in-creases the backscatter values of the vertical proﬁle with a slight shift in local maxima of the canopy layer for both the Capon and the MUSIC estimators. Our results suggest that applying the proper processing and compensation techniques on P-band TomoSAR observations from space will allow the monitoring of forest vertical structure and biomass dynamics.


Introduction
Tropical forests are crucial for understanding the global carbon cycle and its impact on climate dynamics [1,2]. Monitoring forest vertical structure and tree height plays a vital role in the functioning and management of the ecosystem [3][4][5]. Knowledge about the structural dynamics allows us to assess the impacts of natural and human-induced processes on the evolution of forest ecosystems. Such information at fine spatial resolutions serves as an indicator for detecting changes due to deforestation, degradation, and regeneration phenomena [6,7], and helps in understanding how these changes influence the forest function and the climate system [8,9]. Further, vertical forest structure is essential information for the development of an accurate biomass map. Biomass estimates over tropical forests are still a large source of uncertainty compared to their counterparts [10,11] and have to be improved to better represent tropical forests for the projection of climatic scenarios in global models. The spatial and temporal dynamic nature of the forest ecosystem makes it challenging to monitor and characterize its structure via traditional field

Signal Model and Inversion Approaches
The fundamental objective of TomoSAR is to reconstruct the vertical reflectivity profiles for each range-azimuth pixel by focusing in the vertical direction. This is achieved by using multiple SAR images acquired at different sensor positions. Let us consider a simplified geometry of multi-baseline SAR acquisition with N-baseline ( Figure 1). For simplicity, we assume an ideal condition such that the wave penetration over the entire volume and baselines is equally spaced. After SAR images are focused and co-registered with respect to the master image, the resulting return in the nth SAR image from the scatterers can be modeled as follows [38].

Signal Model and Inversion Approaches
The fundamental objective of TomoSAR is to reconstruct the vertical reflectivity profiles for each range-azimuth pixel by focusing in the vertical direction. This is achieved by using multiple SAR images acquired at different sensor positions. Let us consider a simplified geometry of multi-baseline SAR acquisition with N-baseline ( Figure 1). For simplicity, we assume an ideal condition such that the wave penetration over the entire volume and baselines is equally spaced. After SAR images are focused and co-registered with respect to the master image, the resulting return in the th SAR image from the scatterers can be modeled as follows [38].  Here, γ(·) is the scene complex reflectivity; x, r, and v are the azimuth, slant-, and cross-range positions, respectively; R n (r, z, v) denotes the distance between the sensor position and the target (r 0 , v 0 ) for the n th pass; and f is the space invariant post focusing two-dimensional (2D) point spread function (PSF). The calibration of the phase term from topography and uncompensated phase disturbance (atmospheric delay and baseline estimation error), which corrupts the phase of the image [39], will result in the calibrated tomographic data stack that can be expressed as [38,39]: S n (x, r) = γ(x, r, v)e jK z v dv (2) Here, S n (x, r) denotes the complex-valued pixel located at azimuth-slant-range position (x, r) from nth sensor, γ(x, r, v) is the average complex reflectivity within the azimuthslant-range resolution cell, v is the cross-range coordinate perpendicular to platform motion and direction of the radar signal, and K z represents the vertical wavenumber and is related to the Height of Ambiguity (HoA) between the interferometric pair as: Here , b n is the perpendicular baseline with respect to the master image, λ is the signal wavelength, and r 0 is the distance from the sensor to the scatterer. For any fixed azimuthrange index, the calibrated signal from different sensor positions can be represented as samples of Fourier transform of the reflectivity function along the vertical direction [15]. The spectral analysis of Equation (1), using fast Fourier transform, results in a pixel of focused SAR image from the n th pass that can be related to the vertical distribution of the scatterer in the cross-range direction via Fourier transform.
The approach expressed in Equation (4) is known as the back-projection (BP) approach or tomographic focusing [15,17,40,41], which allows us to retrieve the distribution of backscattered power in the cross-range direction. The key parameters that characterize the efficiency of the inversion approach is geometrical resolution in the cross-range and can be expressed as [15]: Here, L tomo is the total length of synthetic aperture achieved in the vertical direction. However, the realistic multi-baseline scenario suffers from irregular baseline and temporal decorrelation. This results in height ambiguities due to non-uniform sampling and degradation of vertical resolution, resulting in anomalous sidelobes, which affects the radiometric quality. The application of super-resolution techniques such as Capon and MUSIC improves the imaging capability and provides better resolution than the BP approach. Capon [23][24][25][42][43][44] is the most widely used non-parametric approach and is viewed as a solution for the minimization problem, as defined in [23,[44][45][46][47], which constitutes the average power of the capon estimator.
Here, P Capon is the backscattered power estimated using the Capon estimator. The MUSIC estimator is a subspace-based technique that exercises the Eigen-decomposition of covariance,R, into orthogonal signal and noise subspaces. This estimation approach is considered to be a model-based approach from the fact that they assume the signals to be a superposition of multiple point-like sources.

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Here, P MUSIC is the backscattered power estimated using the MUSIC estimator,R is estimated covariance matrix, a(z) denotes the steering vector given by Equations (8) and (9), and W n denotes the Eigenvectors of the noise subspace. The noise subspace is estimated by the Eigen decomposition of theR matrix.
The resolution in the vertical direction can be expressed by the exploitation of a simple geometrical relation, z = v.sinθ, where θ is the elevation angle.

Tomographic Compensation
To achieve a robust solution and the accuracy of parameters within the desired values, it is essential to account for factors that distort the tomographic signal. Before starting the parameter retrieval, it is important to review the impact of different compensation approaches used to minimize the effect of these distorting factors on the estimation of biophysical parameters.

Radiometric Compensation
Although the Capon and MUSIC estimators provides better vertical resolution, the radiometric quality is not preserved. The estimators provide a pseudo spectrum rather than a true spectrum. Hence, when we relate a physical quantity such as the forest structure or biomass to the backscatter power from the tomograms, it results in lesser variations in correlation with different layers of the tomograms. To achieve a meaningful relationship between backscatter values, scattering mechanism, and the physical quantity, we compensate the backscatter at each layer by multiplying it by the backscattered power of the master image. In this study, we have used the backscatter of the master image (I M ) in the linear unit. The compensation can be expressed as follows: where, γ(x, g, z) denotes the complex-valued reflectivity corresponding to an azimuthground range cell at an elevation, z, of a tomographic stack, P R E (x, g, z) is the radiometrically compensated backscattered power, E stands for Capon or MUSIC estimators, and S M (x, g, z) is the master image.

Slope Compensation
The SAR signal from the vegetation is expressed as a sum of the contribution from vegetation and underlying terrain characteristics [48,49]. The works by [36,37] discuss the correlation of terrain slope with backscatter at different layers of tomograms. The effect of topographic slope variation on tomographic backscatter layers is discussed and validated from the above-ground biomass (AGB) estimation point of view in [40]. These results indicate the importance of removing the terrain slope from the tomographic layers when estimating forest structure and biomass. The tomographic slope compensation can be expressed, as in [40], in the ground range geometry: Here, P s BP (x, g, v) is the slope compensated backscattered power. Further θ and α denote the radar elevation angle and the local slope in the ground range geometry, respectively.

Volumetric Compensation
As a result of geometric distortion due to incidence angle and slope, the cell resolutions in a slant-and cross-range vary from near-to far-range, resulting in inconsistent volume area covered on the ground. Hence, it is essential to compensate for the volumetric area before relating the backscatter power to any geophysical parameter at the ground level. Here, we begin by assuming that the volume layer is a collection of randomly oriented identical scatterers exhibiting independent scattering effects on the total backscatter. Then, the backscattering coefficient of the 3D resolution cell can be expressed as the summation of backscattering from each scatterer within that resolution cell. Hence, to compensate for the backscattering, volumetric content can be given as follows: Here, ∆x, ∆g, ∆z, ∆r and ∆v are the azimuth, ground, vertical, slant-and cross-range resolutions, respectively. The cross-range resolution for the BP approach is expressed as in Equation (4), and for other conventional covariance-based estimators, discussed above, is given by the interval at which the tomograms are estimated in the vertical direction. For example, we have estimated tomograms at an interval of 1 m for the Capon and MUSIC estimators. Hence, in our case, both slope and volumetric compensations converge to similar results scaled by a constant variable, V c , at volume intervals ∆v = 1.

Materials
Our study site was over the Paracou field station (5 • 18 N, 52 • 55 W), located in a lowland moist tropical forest with high above-ground biomass (up to 450 t/ha) near Sinnamary, French Guiana. The elevation at the site is between 5 and 50 m, and the mean annual temperature is 26 • C, with an annual range of 1.0-1.5 • C. Rainfall averages 2980 mm yr −1 (30-year period), with a three-month dry season (<100 mm month −1 ) from mid-August to mid-November. The landscape is characterized by a patchwork of hills (100-300-m wide and 20-35-m high), separated by narrow streams. The forest in Paracou is classified as a lowland moist forest with 140-200 species per hectare, as specified in the forest census of all trees with a diameter at breast height (DBH) >10 cm [50,51]. The analysis of the vertical structure and tree height estimation were performed over the 16 permanent experimental plots, which were sub-divided into plots of 1-ha, 2-ha, 3-ha, and 4-ha resolutions. The average canopy height is marked at around 30 m, with a maximum reach of up to 45 m and biomass varying between 200-450 t/ha across these plots. We also had access to 2009 data from an airborne LiDAR scanning (ALS) system using a RIEGL LMS-280i onboard a helicopter, which was collected over an area of 1100 ha at high spatial resolution (1-m) with approximately 5.7 points/m 2 [52]. LiDAR-derived Canopy Height Model (CHM) was used to validate the forest height and vertical forest structure.
We used data from the P-band airborne TropiSAR campaign from the summer of 2009 from the framework of the European Space Agency BIOMASS mission calibration and validation activities. The main campaign objectives were to evaluate how P-band radar imaging of tropical forests in different polarimetric, interferometric, and tomographic modes would perform in the estimation of forest height and AGB. The tomographic data were acquired with six fully polarimetric images at P-band, each separated by 15.24 m vertically above the master at equal intervals using a SETHI airborne SAR system from ONERA. The mean values of the vertical wavenumber between the interferometric pair over the region of interest, shown in Figure 2

Methods
The extraction of forest biophysical parameters via the tomographic approach can be divided into three main blocks, as shown in Figure 3: interferometric processing; tomographic processing and parameter retrieval and validation. The interferometric processing begins with the selection of a master image from the stack of SAR images acquired at slightly different geometry (orbits from satellite, flight tracks from airborne platforms). The selection of the master image plays a vital role as it influences the outcome. The slave images are then co-registered at the sub-pixel level and resampled to the master image geometry. Later, flat-earth corrections are applied to the interferometric stack. Because radar techniques measure the phase delay, any occurring propagation disturbance can corrupt the phase signals and has to be accounted for before further processing. The procedure for estimating and removing phase offsets due to propagation disturbances is known as phase calibration [39,53,54]. In this work, the tomographic stack over the Paracou study site was calibrated using the Phase Center Double Localization approach (PCDL) [55]. This approach can be considered as a two-step procedure: (1) estimating the phase-linked errors and (2) solving them to estimate the sensor and target positions. graphic processing and parameter retrieval and validation. The interferometric processing begins with the selection of a master image from the stack of SAR images acquired at slightly different geometry (orbits from satellite, flight tracks from airborne platforms). The selection of the master image plays a vital role as it influences the outcome. The slave images are then co-registered at the sub-pixel level and resampled to the master image geometry. Later, flat-earth corrections are applied to the interferometric stack. Because radar techniques measure the phase delay, any occurring propagation disturbance can corrupt the phase signals and has to be accounted for before further processing. The procedure for estimating and removing phase offsets due to propagation disturbances is known as phase calibration [39,53,54]. In this work, the tomographic stack over the Paracou study site was calibrated using the Phase Center Double Localization approach (PCDL) [55]. This approach can be considered as a two-step procedure: (1) estimating the phase-linked errors and (2) solving them to estimate the sensor and target positions.   The phase calibration procedure allows us to perform focusing along the elevation direction. The tomographic processing begins with the removal of phase offsets due to terrain topography. The knowledge of accurate terrain topography has a significant impact on the TomoSAR focusing as it is essential for (a) removing terrain topography and focus contribution with respect to zero references and (b) accounting for the contribution of terrain slope on backscattered power. The terrain topography was estimated via the approach discussed in Mariotti d'Alessandro and Tebaldini [56], which the reader can refer to for further details. Once the data stack is corrected for propagation disturbance and topographic offsets, the multi-baseline interferometric coherence is estimated. The tomographic inversion is carried out, as discussed in the above section, to generate a tomographic cube. To relate the tomogram to the in-situ data, it is necessary to convert the tomogram from radar geometry to ground geometry. This procedure is performed by interpolating the backscattered power from slant range-cross range geometry to the ground-elevation geometry and requires the understanding of platform positions and terrain topography. Once the tomographic cube is converted to ground geometry, the multi-layered backscattered power stack is compensated for different normalization approaches. The algorithm for retrieving forest canopy height using the tomographic approach, developed and validated using airborne data collected over boreal and tropical forests [17,28,41], was used in this work.
The key idea behind this approach is to investigate the shape formed by the distribution of backscatter power along the vertical direction, (P(z, x, r)), for each azimuth-range index.
Here, we assume that the shape of the backscattered power distribution function along the vertical direction (at each azimuth-range index) can be broken down into three zones. The first zone represents the contribution of backscattering from the canopy layer, primarily from the phase center. As we move in the vertical direction from the phase center, the backscatter profile exhibits loss of power value resulting from diminishing forest canopy density. This constitutes the second zone, known as the power loss zone. The third zone lies above the power loss zone and does not have any association with the physical parameters. This is primarily due to the contribution of noise resulting in the backscattered power in this region. Now, to retrieve the tree height, we begin with the estimation of the phase center (H c ), an effective scattering center over which most of the backscattering power is concentrated, and it is given by: Then we estimate the power loss (K) from the phase center location along the upper envelope in the vertical direction to estimate the forest height (H). However, the value of power loss is unknown and has to be estimated. In this work, we have used CHM derived from LiDAR data for estimating the optimum value of power loss. This estimation procedure can be formulated as: Here, P(H c , x, r) is backscattered power at H c and P(z , x, r) is backscattered power values for elevation ranging from H c to the upper limit of the profile.

Results and Discussions
The multi-baseline data stack was acquired with short temporal baselines obtained within a total span of 2 h. Additionally, no rain events were recorded around the days of data acquisition and hence no or negligible temporal decorrelation can be assumed. The compact, hybrid, and dual circular polarizations (DCP) stack was synthesized from the full polarimetric data and was used for further analysis. The holdout cross-validation approach was performed iteratively by selecting 75% as training and 25% as testing data, and accuracy was assessed using root-mean-square error (RMSE) and Pearson coefficient (r p ). Numerous research has discussed the tomographic analysis of forest over the Paracou site in linear polarization mode [17,36,37,40,41]. However, for this study, from the point of view of tomographic analysis, we are more focused on the compact (PiH & PiV), hybrid (RH & RL), and DCP (RR & RL) modes. The analysis of tomograms is restricted to the patch of the SAR image shown in Figure 2 because all the validation plots and LiDAR data available falls within this region. We investigated the forest vertical profiles using tomograms estimated over the kernel size of 9 × 9 pixels in range-azimuth direction, corresponding to an area 9.0 m × 11.205 m (~100 m 2 ). The vertical resolution of the BP approach depends on the look angle variations from the near-range to the far-range, resulting in variations of Rayleigh resolution from approximately 20 m within the image. However, over the ROI shown in Figure 2, the vertical resolution varies from approximately 20 m in nearrange (4255 m) to 30 m in far-range (6255 m) of ROI. However, for the Capon and MUSIC estimators, we performed the retrieval of backscatter by sampling at 1 m in the vertical direction. The tomograms are normalized such that summation of backscattered power along the elevation direction is one for each voxel, assisting a better visual interpretation of profiles. The LiDAR-derived canopy heights are overlaid over the tomographic profiles for the validation of profile estimation. Figure 4 represents the tomographic profiles using BP (Figure 4a,b), Capon (Figure 4c,d), and MUSIC (Figure 4e,f) estimation approaches along the range direction (of a constant azimuth transect aa' x = 1839 m) at PiH and PiV polarizations. The general observation is that the signal was able to penetrate the volumetric layer to the ground and the scattering is observed from both vegetation and ground surface for all polarizations, but the total backscattered power varies with transmit-receive configuration. It was observed that V-receive (HV, PiV, RV) and cross-polar channels (HV, RL) displayed strong volume contribution with significant contribution from the ground. Further, H-receive (HH, PiH, RH) and co-polar channels (HH, VV, RR) show dominant ground scattering behavior, with HH exhibiting the strongest of them all. The tomographic profiles, estimated using Capon in the range direction for a mid-azimuth section cut (aa' x = 1839 m), displays a similar overall vertical profile as the BP approach. They are able to better resolve the scatterers and suppress sidelobes; however, they exhibit a loss of radiometric accuracy. For tomographic profiles estimated using MUSIC, we have used a second-order estimator, which allows us to retrieve both the ground and canopy scattering components. The second-order estimator is constructed by spanning the noise subspace obtained by selecting the Eigenvectors corresponding to N-2 smallest Eigenvalues. This allows the MUSIC estimator to locate the position of the scatterer's phase centers, resulting in better discretization of targets. Figure 4 shows that the ground and canopy top positions can be clearly demarcated with suppressed sidelobes for the MUSIC estimator, indicating that it may assist better retrieval of terrain and height information.   Each tomographic layer in the stack is related to backscattered power at a different height (0 m, 10 m, 20 m, 30 m and so on), which are ground steered to the corresponding terrain height values. The analysis of the multi-layer tomographic cube exhibited the influence of terrain slope on the backscattering power at different layers. For the BP approach, it is observed that the top and bottom layers of the stack displayed a strong correlation with terrain slope, while the intermediate layers showed less sensitivity to terrain slope. However, the backscattered power at different layers of tomographic cubes using Capon or MUSIC showed no or negligible correlation with terrain slope, as shown in Figure 5. This is because the super-resolution estimators provide pseudo-spectrums such that the radiometric characteristics of the image are no longer preserved and therefore result in a lack of sensitivity to the effect of the terrain slope. Similarly, for the middle layers, the BP estimators show increased sensitivity to different scattering components of the forest, whereas, in contrast, Capon and MUSIC show less sensitivity. Hence, to achieve a meaningful relationship between backscatter values and the forest vertical structure and tree height, radiometric compensation (R.C.) was applied to the tomographic cubes for the super-resolution techniques. From Figure 5, it can be observed that the implementation of R.C. results in a significant correlation between the backscattered power and terrain slope. This is primarily due to the influence of ground contribution resulting from the scatterer's orientation within the pixel of the master image used for compensating the tomographic layers. This effect was much more prominent in the ground and top layers than in the middle layers. Additionally, it was observed that the radiometric compensation in the co-polar channels is more influenced by the ground contribution than it is in the cross-polar channels. Figure 6 displays the vertical profiles of the tomograms generated for different polarizations over the 1-ha resolution validation plots using different estimators. The profiles of Capon and MUSIC displays the radiometrically calibrated backscattered power of the tomogram. Figure 6 shows that MUSIC and Capon estimators provide better separation between the ground and volumetric contribution compared to the BP approach. It can be observed that the maximum mean backscattered power for the volume contribution lies between 20-21 m for all the polarization channels for different estimators. Additionally, it is observed that the BP estimated backscattered power showed a dynamic range (P min , P max ) of −20 to −7 dB, whereas Capon and MUSIC displayed a larger dynamic range of −32 to 3 dB and −11 to 26 dB, respectively, depending on the polarization. Figure 6 also shows that the ground layer displays a strong backscatter. This is primarily due to the fact that the ground scattering and the phase center of ground-trunk interactions is located on the ground over flat terrain [36,37].   Figure 6 shows that MUSIC and Capon estimators provide better separation between the ground and volumetric contribution compared to the BP approach. It can be observed that the maximum mean backscattered power for the volume contribu- To assess the impact of slope and volumetric normalization on the backscattered power of different layers, we consider the uncompensated backscattered power of BP, and radiometrically calibrated Capon and MUSIC backscattered power (mentioned as uncompensated in Figure 6 to maintain consistency in naming convention). Figure 7 displays the backscattered power at 0 and 30 m layers for PiV polarization. It is observed that, for the BP approach, the ground layer shows a strong correlation with the terrain slope when compared to Capon and MUSIC. Similar behavior is observed in the top layers but to a lesser extent. tion lies between 20-21 m for all the polarization channels for different estimators. Additionally, it is observed that the BP estimated backscattered power showed a dynamic range (Pmin, Pmax) of −20 to −7 dB, whereas Capon and MUSIC displayed a larger dynamic range of −32 to 3 dB and −11 to 26 dB, respectively, depending on the polarization. Figure 6 also shows that the ground layer displays a strong backscatter. This is primarily due to the fact that the ground scattering and the phase center of ground-trunk interactions is located on the ground over flat terrain [36,37]. To assess the impact of slope and volumetric normalization on the backscattered power of different layers, we consider the uncompensated backscattered power of BP, and radiometrically calibrated Capon and MUSIC backscattered power (mentioned as uncompensated in Figure 6 to maintain consistency in naming convention). Figure 7 displays the backscattered power at 0 and 30 m layers for PiV polarization. It is observed that, for the BP approach, the ground layer shows a strong correlation with the terrain slope when compared to Capon and MUSIC. Similar behavior is observed in the top layers but to a lesser extent. The intermediate layers are less affected by slope for all estimators. However, normalizing the intermediate layers with respect to slope and volume resulted in decreased backscatter values for BP and not much variation for Capon and MUSIC estimators.

Tomographic Tree Height Estimation
The tree height is estimated with the assistance of LiDAR-derived CHM values over the study site. The power loss value, in Equation (12), is varied from 0 to −15 dB for BP and Capon and 0 to −30 dB for MUSIC estimator. Then the error statistics are calculated with respect to LiDAR-derived CHM over the training site. The power loss that corresponds to the minimum root mean squared error (RMSE) value is selected as the optimum power loss value. Finally, tree height for the rest of the image is estimated using the optimum K value and validated over the testing sites. In order to understand the impact of different compensation techniques on retrieval of tree height, we begin with comparing

Tomographic Tree Height Estimation
The tree height is estimated with the assistance of LiDAR-derived CHM values over the study site. The power loss value, in Equation (12), is varied from 0 to −15 dB for BP and Capon and 0 to −30 dB for MUSIC estimator. Then the error statistics are calculated with respect to LiDAR-derived CHM over the training site. The power loss that corresponds to the minimum root mean squared error (RMSE) value is selected as the optimum power loss value. Finally, tree height for the rest of the image is estimated using the optimum K value and validated over the testing sites. In order to understand the impact of different compensation techniques on retrieval of tree height, we begin with comparing the results of the Capon and MUSIC estimator with and without radiometric corrections. Applying the radiometric correction resulted in increased power loss value for MUSIC; however, for Capon, the minimal trend is shown. The height estimation from radiometrically corrected backscattered power resulted in increased RMSE values, especially prominent in the copolarization channels at 1-ha resolution. Additionally, there was no difference in RMSE of tree height values estimated using the uncompensated and slope compensated backscattered power of the BP approach. However, the height estimates from volume backscattered power displayed significantly higher RMSE values compared to its counterpart, as seen in Figure 8d Here, we make use of the tree height estimated using uncompensated backscattered power for comparison of error statistics between estimators. Figure 8 displays the RMSE and R 2 of tree heights estimated using tomographic backscattered power at PiH and PiV polarizations. For each polarization, the minimum RMSE value was achieved for a power loss value with respect to a phase center height that falls within −2.88 ± 0.50, -10.17 ± 0.83 and −17.64 ± 0.79 dB for BP, Capon and MUSIC estimator, respectively. Figure 9 shows that the increase in resolution not only improved RMSE value but also the reliability of estimates. It was possible to retrieve the canopy height with an overall accuracy of RMSE of about 12% at 1-ha resolution to 6.5% at 4-ha of average LiDAR measured mean top canopy height, as shown in Table 1. Tree height retrieval using the MUSIC slightly outperforms Capon for all polarization channels, with BP performing the worst of the three. Here, we make use of the tree height estimated using uncompensated backscattered power for comparison of error statistics between estimators. Figure 8 displays the RMSE and R 2 of tree heights estimated using tomographic backscattered power at PiH and PiV polarizations. For each polarization, the minimum RMSE value was achieved for a power loss value with respect to a phase center height that falls within −2.88 ± 0.50, −10.17 ± 0.83 and −17.64 ± 0.79 dB for BP, Capon and MUSIC estimator, respectively. Figure 9 shows that the increase in resolution not only improved RMSE value but also the reliability of estimates. It was possible to retrieve the canopy height with an overall accuracy of RMSE of about 12% at 1-ha resolution to 6.5% at 4-ha of average LiDAR measured mean top canopy height, as shown in Table 1. Tree height retrieval using the MUSIC slightly outperforms Capon for all polarization channels, with BP performing the worst of the three. The right circular transmits consistently performed better, along with the VV polarization. The validation of tree height estimates using different estimators was also performed for different slope bins. It was noted that the bias of tree height estimates shows a clear correlation with terrain slope. In the BP approach, most of the terrain areas displaying positive slopes underestimated the tomographic-based heights compared to the LiDAR canopy heights. Conversely, for most of the cases with negative slopes, the tomographic-based height estimates showed higher values compared to LiDAR canopy heights, resulting in an overestimation of forest heights. However, Capon and MUSIC both show smaller bias values, with less dispersion.

Forest Vertical Profile and Tomographic Metric
The forest vertical profiles in Figures Figure 10 shows the forest vertical profiles for HH (blue), HV (orange) and VV (green) polarization channels from uncompensated and radiometrically compensated backscatter power using Capon and MUSIC estimators. It is observed that, for uncompensated Capon and MUSIC, backscattered power at different polarization shows a similar response. The distinct local maxima are found at ground level of the vertical profile for all plot, indicating the capability of the P-band to penetrate to ground level. For low-density plots, the demarcation of canopy level was found to be difficult, especially when using the Capon estimator. This weaker response to the canopy layer can be attributed to the sparse vegetation component in the upper compartment of vegetation over these plots. However, for Plots 13 and 16, the canopy maxima were observed around 24 and 22 m for both the Capon and the MUSIC estimator, respectively. The radiometric correction resulted in an increase in backscatter value of profiles with a shift in maxima of canopy layer between 27-29 and 24-26 for Plots 13 and 16 for both the Capon and the MUSIC estimators. Additionally, the cross-polarized channel shows lower values of intensity along with the vertical profile compared to the co-polarized channels for both estimators after radiometric compensation. Figure 11 shows the forest vertical profiles for PiH polarization with no (red), slope (green) and volume (cyan) compensated backscatter power using BP, radiometrically corrected Capon, and MUSIC estimators. It is observed that, for Plots 13 and 16, irrespective of the approach used, the maxima is achieved around a similar height, with Capon and MUSIC distinctly demarcating the local maxima and canopy layer. Compensating for slope and volume resulted in a decrease in the backscatter values of profiles with similar profiles pattern. The higher decrease in volume compensated BP profile could be related to coarse resolution in the vertical direction. For the radiometrically compensated Capon and MUSIC estimators, the effect of slope and volume compensation resulted in much lesser variation compared to BP, which can be related to the finer spacing in the vertical direction for the super-resolution techniques. Remote Sens. 2021, 13, x FOR PEER REVIEW 18 of 23    Figure 11 shows the forest vertical profiles for PiH polarization with no (red), slope (green) and volume (cyan) compensated backscatter power using BP, radiometrically corrected Capon, and MUSIC estimators. It is observed that, for Plots 13 and 16, irrespective of the approach used, the maxima is achieved around a similar height, with Capon and MUSIC distinctly demarcating the local maxima and canopy layer. Compensating for slope and volume resulted in a decrease in the backscatter values of profiles with similar profiles pattern. The higher decrease in volume compensated BP profile could be related to coarse resolution in the vertical direction. For the radiometrically compensated Capon and MUSIC estimators, the effect of slope and volume compensation resulted in much lesser variation compared to BP, which can be related to the finer spacing in the vertical direction for the super-resolution techniques.
As we know that the tomographic layer provides the 3D distribution of backscattered power of a volumetric media, we derive a tomographic metric, integrated tomographic Figure 11. Forest vertical profiles from P-band tomographic data of low density (Plots 7 and 8) and high density (Plots 13 and 16) AGB forest plots for PiV polarization channels with uncompensated (red), slope (green) compensated, and volume (cyan) compensated backscattered power derived using BP, Capon, and MUSIC estimators at 2-ha resolution. The tree height histogram (navy blue) from LiDAR CHM is also provided to give a representative tree height within the plot: As we know that the tomographic layer provides the 3D distribution of backscattered power of a volumetric media, we derive a tomographic metric, integrated tomographic power (P I pq ) by integrating the backscattered power along the z-direction from half of the vertical resolution from the ground to the tree height. The lower cut-off of half of the vertical resolution was selected in order to reduce the impact of ground and double-bounce contribution, which perturb the backscattered power at the lower tomographic level. Figure 12a represents the uncompensated and radiometrically compensated integrated power using the Capon and MUSIC estimators. Figure 12b shows tomographic integrated power using BP, radiometrically corrected Capon and MUSIC estimators with uncompensated, slope and volume compensation. It is noted that there is a decrease in backscatter power from near-to far-range for all the estimators after slope and volume compensation. The large decrease in integrated backscatter value after volumetric compensation over BP can be attributed to the vertical resolution of the BP estimator. resents the uncompensated and radiometrically compensated integrated power using the Capon and MUSIC estimators. Figure 12b shows tomographic integrated power using BP, radiometrically corrected Capon and MUSIC estimators with uncompensated, slope and volume compensation. It is noted that there is a decrease in backscatter power from nearto far-range for all the estimators after slope and volume compensation. The large decrease in integrated backscatter value after volumetric compensation over BP can be attributed to the vertical resolution of the BP estimator. Figure 12. Tomographic derived metric over the Paracou ROI -HV backscattered power derived by integrated along the z-direction between half of the vertical resolution from the ground to tree height: (a) uncompensated and radiometrically compensated integrated power using Capon and MUSIC. The top left image represents the slope and the top right represents the vertical resolution. (b) uncompensated (represents radiometrically corrected for Capon and MUSIC). Uncompensated, Slope corr., and Volume corr. represent the uncorrected, slope, and volume compensated integrated power using BP, Capon, and MUSIC estimator.

Conclusions
In this study, we present the comparison of different P-band tomographic SAR processing and radiometric compensation techniques on the retrieval of the forest canopy height and vertical profile over a tropical forest site in French Guiana, with high biomass density variations. The tomographic P-band BP, Capon and MUSIC profiles at different polarizations showed a good correlation with the LiDAR CHM. The horizontal receive and co-polar channels better display the contribution of ground scattering, whereas the volume contribution is highlighted in V receive and cross-polar channels. The impact of different backscatter compensation approaches on parameter estimation was discussed Figure 12. Tomographic derived metric over the Paracou ROI-HV backscattered power derived by integrated along the z-direction between half of the vertical resolution from the ground to tree height: (a) uncompensated and radiometrically compensated integrated power using Capon and MUSIC. The top left image represents the slope and the top right represents the vertical resolution. (b) uncompensated (represents radiometrically corrected for Capon and MUSIC). Uncompensated, Slope corr., and Volume corr. represent the uncorrected, slope, and volume compensated integrated power using BP, Capon, and MUSIC estimator.

Conclusions
In this study, we present the comparison of different P-band tomographic SAR processing and radiometric compensation techniques on the retrieval of the forest canopy height and vertical profile over a tropical forest site in French Guiana, with high biomass density variations. The tomographic P-band BP, Capon and MUSIC profiles at different polarizations showed a good correlation with the LiDAR CHM. The horizontal receive and co-polar channels better display the contribution of ground scattering, whereas the volume contribution is highlighted in V receive and cross-polar channels. The impact of different backscatter compensation approaches on parameter estimation was discussed and validated at different spatial scales relevant to the BIOMASS mission observational configuration. The performance of forest height retrieval using P-band SAR data, assisted by LiDAR CHM at different tomographic estimator-and polarization-resolutions was compared and validated. The RMSE values of 1.71 m and 1.74 m were achieved using PiV and VV polarization using the MUSIC estimator at 4-ha resolution, with corresponding R 2 values of 0.996 and 0.995, respectively. It is observed that estimating forest height from radiometric or slope and volume compensated backscattered power does not significantly improve the estimates, but rather resulted in the degradation of estimates in most cases. Additionally, the height estimates from different polarizations fall within the error range, suggesting that the scattering mechanisms seem to have a minor effect on polarization. However, this needs to be further investigated. The analysis of forest vertical profile displayed strong contribution from the ground level. The plots with higher biomass density displayed stronger canopy demarcation compared to sparse density plots. Compared to BP, Capon and MUSIC profiles showed a strong performance in demarcating the scattering contributions. Applying radiometric correction to Capon and MUSIC profiles resulted in the increase in backscatter intensity along the vertical profile, with the co-polar channel showing higher increase values. Conversely, the slope and volume compensation resulted in the decrease in backscatter power of the profile, with volumetric compensation of BP showing a larger decline, which could be related to coarse vertical resolution. Similar behavior was observed for the tomographic-derived metric. Note that, in this study, the SAR data are used in their original bandwidths; any bandwidth reduction for space observations (e.g., 6 MHz for the BIOMASS mission) will impact the corresponding R 2 and RMSE but will not change the overall relative performance of the TomoSAR techniques demonstrated here.