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. . , 2003, . 24, . 9, 1811–1822 Crown closure estimation of oak savannah in a dry season with Landsat TM imagery: comparison of various indices through correlation analysis BING XU, PENG GONG and RUILIANG PU Center for Assessment and Monitoring of Forest and Environmental Resources (CAMFER), 151 Hilgard Hall, University of California, Berkeley, CA 94720-3110, USA; e-mail: [email protected] (Received 6 February 2001; in final form 19 November 2001) Abstract. In this paper, we assess the capability of Landsat Thematic Mapper (TM) for oakwood crown closure estimation in Tulare County, California. Measurements made from orthorectified aerial photographs for the same area were used as a reference. The linear relationship between crown closure and digital values of each band of the TM image was examined. TM Band 3 had the highest correlation (r=−0.828; R2=0.687) with crown closure measurements. The simple ratio (SR) and the normalized difference vegetation index (NDVI) were generated for correlation analysis and only NDVI showed better correlation (r=0.836; R2=0.699) than use of single bands. An additional index (NIRN−RN)/(NIRN+RN), called NDVIN, was experimented, NDVISQ (N=2) and NDVICUB (N=3) showed some improvements over SR and NDVI (r= 0.855; R2=0.732 for N=3). Through multiple regression with all six bands, we found that there was a considerable amount of improvement in variability explanation over any individual band or index tested (R2=0.803). NIR, red and blue bands were able to adequately model crown closure as using all the six TM bands (R2=0.802). Principal component analysis (PCA) and Kauth-Thomas (K-T) transform were applied to reduce multi-collinearity among bands. The third principal component and greenness in K-T transform showed similar effects to those of NDVI. Transformation of digital numbers (DNs) to radiances kept the results of single band and multiple band estimation the same, and did not improve the index estimation very much. A simple radiometric correction of the TM image improved results for the NDVI (r=0.840; R2=0.705) and NDVISQ estimation (r=0.861; R2=0.741), but worsened estimation results of single band and multiple bands. 1. Introduction Crown closure is the percentage of forest canopy projected to a horizontal plane over a unit ground area. It is an important parameter in ecological, hydrological and climate models. Its measurement in the field is difficult and time-consuming (Bonham 1989). This is particularly true over large areas. Although efficient sampling strategies can be employed, such methods can be prone to error. Statistical correlation analysis between the crown closure and spectral properties is dependent on the accuracy of ground measured and remotely sensed data (Chen and Cihlar 1996). Therefore, we used classification results from orthorectified aerial photographs at International Journal of Remote Sensing ISSN 0143-1161 print/ISSN 1366-5901 online © 2003 Taylor & Francis Ltd http://www.tandf.co.uk/journals DOI: 10.1080/01431160210144598 1812 Bing Xu et al. 1 m ground resolution as ground data in this study. Landsat TM data were used as regressors after geometric registration of the air photo and the satellite image. The correlation between tree density and TM data was explored in an oak savannah in southern Spain (Joffre and Lacaze 1993). It was found that the grey level values of bands 2–5 were all negatively correlated with the tree density; the NIR was the highest (r=−0.53). A recent study found a higher correlation between savannah vegetation cover percentage and the red band of Landsat Multi-Spectral Scanner (MSS) (R2=0.88) with a relatively small sample set (n=22) in eastern Zambia (Yang and Prince 2000). Direct band transformation might provide a better correlation. Normalized difference vegetation index (NDVI) was correlated with canopy cover using Landsat TM (r=0.552) and MSS (r=0.698) and SPOT HRV XS (r=0.718) data (Larsson 1993). Leaf area index (LAI), a parameter directly related to crown closure, could be retrieved using NDVI derived from Landsat TM data through linear or log linear models (Spanner et al. 1990, Gong et al. 1995, Chen and Cihlar 1996). Estimation of canopy cover from multiple bands was investigated using airborne sensors, such as the Compact Airborne Spectrographic Imager (CASI) for forest inventory (r varies from 0.76 to 0.94) (Baulies and Pons 1995) and crown closure estimation of conifer forest (Gong et al. 1994). Multispectral data can be transformed using principal component analysis (PCA) from a statistical point of view and Kauth-Thomas (K-T) transform on a physical basis (Kauth and Thomas 1976). Some investigators found that redness was somehow more correlated with canopy cover than greenness in boreal forest at high latitudes (Foster et al. 1994). K-T greenness/redness ratio (GR ratio) was found to provide a higher correlation (r=0.81) with brush canopy cover in rangeland using Landsat MSS data (Boyd 1986). Among the studies, none compared a number of approaches at the same study site. In this paper we report the exploration of single band, vegetation indices, multiband regressions, multi-spectral transformation for crown closure estimation using Landsat TM imagery. Conversion of digital numbers (DNs) to radiance was tested. A simple radiometric correction of the image that attempted to reduce Rayleigh scattering of the atmospheric effect was also applied and evaluated in this study. 2. Data acquisition and preparation Our study area is a hardwood rangeland in Tulare County, California, USA. It is covered by oakwood, bare soil, grass and shrubs. The Landsat TM image was taken in August 1995. The false colour composite of the TM image is shown in figure 1. Crown closure in this area is generally less than 20%. Due to the Mediterranean climate in California, the sky in the summer months is usually crystal clear. Grasses are dead and dry during the dry summer months. The reflectance of soil and dry grasses is higher than that of oak tree leaves in the visible bands of the TM image. The red colour in figure 1 shows crown coverage. Sample pixel values from Issabelly Lake in the same TM scene were taken as dark target to do radiometric correction. It was assumed that radiance was inversely proportional to the 4th power of the spectral wavelength due to Rayleigh scattering (Lillesand and Kiefer 1994). The path radiance over water bodies in each band was calculated and subtracted from the spectral signals of each band (Gong and Zhang 1999). The airphoto mosaics, shown in figure 2, were taken in the dry season 2 months later than the satellite imagery. The airphotos (scale 1:40 000) were scanned at 1 m ground resolution. The scanned photographs were orthorectified using a digital Crown closure estimation with L andsat T M imagery 1813 Figure 1. Study site in Tulare County of California in a standard false colour display of the Landsat TM imagery. Figure 2. Aerial photograph corresponding to figure 1. photogrammetric software package. GCPs (ground control points) measured with GPS (global positioning system) equipment were used to derive the photographic stations and they were subsequently used in stereo model development and orthorectification. The TM image was georeferenced with respect to the corresponding orthorectified aerial photograph. Therefore, each pixel in the TM image corresponded to 30 pixels by 30 pixels in the aerial photograph. In each ‘transparent’ mask (corresponding to one pixel) of the TM image over the 30 pixels by 30 pixels of the aerial photograph, we were able to calculate the crown closure. Image processing such as image thresholding and classification was applied to derive land-cover types from the aerial photographs. The surface cover classification results were used to 1814 Bing Xu et al. calculate the percentage of crown closure, grass and soil for each corresponding pixel on the TM image. The classification results from the aerial photograph are shown in figure 3. We randomly chose 130 samples from the sunlit sites for this study. Pixels on shaded sides of the scene require topographic correction, which will be dealt with elsewhere. 3. Crown closure estimation by single band or indices For each of the 130 sample pixels, we extracted the DNs from the six bands of the TM image covering the blue, green, red, near-infrared and two middle infrared spectral ranges. Linear relationships can be observed from the scatterplots (figure 4). The correlation coefficient (r), R-squared (R2), and residual standard errors (rse) are reported in table 1. The DN in the red band is negatively correlated with the crown closure (r=−0.828), and explains 68.7% of data variability. The superior performance of the DN in the red band of the TM image agrees with that of the MSS image (Yang and Prince 2000). However, the DN of the NIR band (band 4) has a low correlation with crown closure (r=0.222). For band 4 in figure 4, the fitted line traverses through the empty space of data clusters, compromising the cluster with no crown closures. Samples with 0% crown closure and high DNs in the red band are mainly covered by grass, soil or both. In general, 0% crown closure should be included in an analysis. We also carried out analysis without sample points of 0% crown closure as pixels with 0% crown closure can be determined by image classification. It is interesting to note that removing those samples with 0% closure did not affect much of the results except for the NIR band with which some improvement in correlation (r=0.456) was obtained. It caused a slight decrease in correlation for bands 2 and 3 (table 1). Our results in the NIR band are different from those of Joffre and Lacaze (1993), although the environments are similar. The TM data in Joffre and Lacaze (1993) were collected in late spring and the homogeneous herbaceous background had stronger reflectance than the trees. A reduction in crown closure would increase the Figure 3. Pseudo colour display of classification results of the aerial photograph (red: crown closure; green: grass; white: soil). 80 1.0 30 40 40 90 50 60 70 80 1.0 Crown Closure 0.8 1.0 0.6 0.0 0.2 0.4 Crown Closure 0.2 80 30 TM 3 0.0 70 0.6 20 0.8 1.0 0.8 0.6 0.4 0.2 Crown Closure 50 TM 2 0.0 60 0.4 Crown Closure 0.2 0.0 90 TM 1 0.6 70 0.4 60 1815 0.8 1.0 0.8 0.6 0.0 0.2 0.4 Crown Closure 0.6 0.4 0.0 0.2 Crown Closure 0.8 1.0 Crown closure estimation with L andsat T M imagery 60 80 100 TM 4 120 140 160 20 TM 5 40 60 80 TM 7 Figure 4. Scatter plots of crown closure (%) against DN of each TM band. Table 1. Statistical analysis between single bands with crown closure*. Crown closure TM1 TM2 TM3 −0.791 −0.795 −0.828 (−0.802) (−0.794) (−0.811) R-squared (R2) 0.626 0.632 0.687 (0.643) (0.630) (0.657) Residual standard error (rse) 0.191 0.189 0.175 (0.201) (0.205) (0.197) Correlation coefficient (r) TM4 0.222 (0.456) 0.050 (0.208) 0.304 (0.299) TM5 TM7 −0.733 −0.734 (−0.767) (−0.779) 0.538 0.540 (0.588) (0.607) 0.212 0.212 (0.216) (0.211) *Values in brackets are after removing 0% crown closure Bold number indicates the highest correlation, while italicized number indicates the lowest correlation among different bands (columns). This notation is applicable to all the tables in this paper. reflectance in the NIR band. Our data were acquired in late summer when grassland was dead. Thus only the increase of crown closure would increase the reflectance in the NIR. The negative correlations with other bands in our study were caused by the dry background with greater reflectivity than the crowns. Transforming DNs to radiance with a linear model (Markham and Barker 1986) kept the correlation coefficient with individual band the same. This is well explained by the least squares theory (equation (1)) that the DNs multiplied by a constant c in each band will not change the final result but the slope of the estimated line, since the absolute values of the regressors (brightness values in each band) are changed. The subtraction term was so small that it could be neglected. In the equation, y is observation (crown Bing Xu et al. 1816 closure from aerial photograph), ŷ is estimator (crown closure to be estimated), and X is regressor (radiance or DN from the TM image). ŷ=cX((cX)∞(cX))−1(cX)∞y=X(X∞X)−1X∞y (1) Simple radiometric correction by subtracting a constant obtained by only approximating the Rayleigh scattering of the atmospheric condition for each band did not improve the correlation. The slope of the estimated line was kept the same, and the intercept term was changed instead (equation (2)). The estimate result is not the same as that without radiometric correction. ŷ=(X−c)((X−c)∞(X−c))−1(X−c)∞y≠X(X∞X)−1X∞y (2) Correlation analysis with vegetation indices was made (table 2). SR, the DN ratio between the NIR and the red band, did not improve the correlation when compared with the result from the analysis of the red band. Apparently the poor correlation between NIR and crown closure was the reason for the poor performance of SR. NDVI, which took advantage of both the high variability of the NIR band among different land-cover types and the relatively stable prediction of the red band, showed a slight improvement over the red band. Since NDVI showed a minor improvement over the red band and SR, we are led to speculate that the wider spectral variability between the NIR and the red band after normalization may help improve the correlation. This may be caused by reduction of illumination differences on the sunlit sides of the hills. It seemed to us that the spectral difference between the NIR and red bands is the primary contributor in the correlation analysis, thus we attempted to enlarge this difference by taking the difference of powered DNs. NDVISQ, NDVICUB, NDVIN are defined in the following equations (equation (3)). The NDVIN can be expressed by SR. SR= NDV IN7 NIR R (3) NIRN−RN SRN−1 = for N=1, 2, ... NIRN+RN SRN+1 when N=2 we have NDVISQ, when N=3 we have NDVICUB. In this exploration, we tested a number of indices. We found that NDVISQ, NDVICUB produced better regression results than SR, NDVI and other higher ordered NDVIN (N4). We can see from the quadratic curve that the correlation Table 2. Correlation analysis between vegetation indices derived from raw digital values and crown closure*. Crown closure SR NDVI Correlation coefficient (r) R-squared (R2) Residual standard error (rse) 0.782 (0.748) 0.611 (0.560) 0.194 (0.223) 0.836 (0.804) 0.699 (0.646) 0.171 (0.200) NDVISQ NDVICUB Redness 0.851 (0.824) 0.725 (0.679) 0.164 (0.191) 0.855 (0.838) 0.732 (0.702) 0.162 (0.183) −0.730 (−0.765) 0.533 (0.585) 0.213 (0.217) *Values in brackets are after removing 0% crown closure Greenness (G−R)/(G+R) 0.837 (0.811) 0.700 (0.657) 0.171 (0.197) −0.822 (−0.804) 0.676 (0.646) 0.177 (0.200) Crown closure estimation with L andsat T M imagery 1817 coefficient (r) increases as order N increases reaching its maxima when N=3, then decreases abruptly as N further increases (figure 5 lower right). There is no significant difference between the correlation coefficients when N is at 2 or 3, so the optimal N is 2 and 3 (figure 5). Transforming DN to radiance did not improve the correlation with vegetation indices. We could first look at the transformation formula and the coefficients we applied below (Markham and Barker 1986). Radiance(i)=L MIN(i)+ L MAX(i)−L MIN(i) DN(i) i=1, 2, ..., 6 DNMAX L MIN=(−0.15, −0.28, −0.12, −0.15, −0.037, −0.015) (4) L MAX=(15.21, 29.68, 20.43, 20.62, 2.719, 1.438) DNMAX=256 1.0 0.8 0.6 0.0 0.2 0.4 Crown Closure 0.6 0.4 0.0 0.2 Crown Closure 0.8 1.0 The corresponding coefficients of L MIN and L MAX are −0.15 and 20.62 for the NIR band, and −0.12 and 20.43 for the red band. There is a 1‰ larger scaling (slope) effect for the NIR than the red reflectance, however, a bigger cut (3%) of the intercept term for the NIR than that for the red band. The combined up-scaling and downshifting effects of the radiance transformation would not be able to considerably enlarge the spectral differences between the NIR and the red bands. Therefore, the NDVI and NDVIN using radiance did not improve the correlation over the DNs by much (table 2 and table 3). The radiometric correction based on Rayleigh scattering applied a simple subtraction from the transformed radiance. A larger constant was subtracted from the red 0.0 0.1 0.2 0.3 0.4 0.5 0.6 0.0 0.2 0.4 0.8 0.85 0.80 0.75 correlation coef 0.0 0.65 0.70 0.8 0.6 0.4 0.2 Crown Closure 0.6 NDVISQ 1.0 NDVI 0.0 0.2 0.4 NDVICUB 0.6 0.8 1.0 2 4 6 8 10 N Figure 5. Regression between crown closure (%) and NDVIN (N=1, 2, 3); plot of correlation coefficient vs. N varying from 1 to 10. Bing Xu et al. 1818 Table 3. Correlation analysis between vegetation indices derived from radiance and crown closure*. Crown closure NDVI Correlation coefficient (r) R-squared (R2) 0.836 (0.803) 0.699 (0.646) 0.171 (0.200) Residual standard error (rse) NDVISQ NDVICUB Redness 0.852 (0.825) 0.726 (0.680) 0.163 (0.190) 0.855 (0.839) 0.731 (0.704) 0.162 (0.183) −0.693 (−0.732) 0.481 (0.536) 0.224 (0.229) Greenness (G−R)/(G+R) 0.839 (0.811) 0.704 (0.657) 0.17 (0.197) −0.832 (−0.817) 0.693 (0.668) 0.173 (0.194) *Values in brackets are after removing 0% crown closure band, and a smaller constant was subtracted from the NIR band. It can be expected from the former rationale that the transformation might be able to produce some improvements, because we had enlarged the radiance difference between NIR and red bands. This turned out to be true (table 4). 4. Crown closure estimation by multiple bands and combination of components The above analysis only took one band or a transformation between two bands into consideration. Would additional bands further improve the correlation? We made use of the three visible, the NIR and the two MIR bands to do multiple regression. We had achieved a considerable amount of improvement based on the result of a high R-squared value of 80.25% (the p-value is 0). The six-band regression explained the most variability among all the above-mentioned approaches, which was reasonable. The residual standard error, 0.170, did not drop and remained at a similar level to that of NDVI. We knew that the degree of freedom of the multiple regression model was no longer n-2 or 130-2, but n-6 or 130-6. The residual standard error, denoted by rse, was calculated by the following formula. rse2=( y−Xb̂)T (y−Xb̂)/(n−p) (5) where n is sample size, p is number of regressors and b̂ is a p×1 vector, the estimated coefficient for each regressor. There is a trade-off here between the sum of squared errors and the degree of freedom. Although the sum of squared errors may become smaller by using six bands instead of two bands, the degree of freedom also becomes smaller. The resulting rse may therefore be kept at a similar level. Based on the fact that the model estimation using bands 1, 3 and 4 only was Table 4. Correlation analysis between crown closure and vegetation indices derived from raw digital values after doing radiometric correction*. Crown closure NDVI NDVISQ NDVICUB Correlation coefficient (r) 0.840 (0.841) 0.705 (0.707) 0.169 (0.169) 0.861 (0.864) 0.741 (0.746) 0.159 (0.157) 0.856 (0.855) 0.733 (0.732) 0.161 (0.162) R-squared (R2) Residual standard error (rse) *Values in brackets are derived from radiance Crown closure estimation with L andsat T M imagery 1819 15 20 25 1.0 -40 -20 -40 -75 -70 PC 4 -65 -60 0 20 1.0 Crown Closure 0.8 1.0 0.6 0.0 0.2 0.4 Crown Closure 0.2 0.0 -80 -20 PC 3 0.8 1.0 0.8 0.6 0.4 0.2 Crown Closure -30 PC 2 0.0 -85 0.6 0.2 0.0 -50 PC 1 0.6 10 0.4 5 0.4 Crown Closure 0.8 1.0 0.8 0.6 0.0 0.2 0.4 Crown Closure 0.6 0.4 0.0 0.2 Crown Closure 0.8 1.0 statistically significant (i.e. the p-value is small enough when a is at 0.05 significance level in the F-test), we only chose these three bands for the regression. The multiple R2 accounted for 80.18% of the data variability, remaining at the same level as that using all six bands. The residual standard error was kept as low as 0.168 with 127 degrees of freedom. The analysis of variance gave a p-value of 0.93 while doing a Ftest for the model with all the bands and with bands 1, 3 and 4, showing no significant difference between the two models. We conclude that the red, NIR and the blue band modelled the crown closure estimation as adequately as using all six bands. To get rid of the high correlation among different bands, we orthogonalized the columns of the regression bases formed by the spectral values of the samples and established a new set of orthogonal coordinates system. The approaches we applied here were PCA and K-T transform. Distribution variability of land-cover types was needed to enlarge the contrast between group signatures. The linear regression using each component is shown in figure 6. The 3rd principal component shows the best fitting result, which is almost the same as that of the red band among all six components (r=−0.825; R2=0.681). When we used all six components together, we found that the only significant term in the regression was the 3rd principal component. When we combined the 3rd principal component with the 2nd principal component to model the crown closure, we got a similar result to that using the red and the NIR band directly. The R2 and the rse were 78.92% and 0.173. PCA, picking the principal components by putting the data variance in order, did not lead to a better estimation for crown closure than that of the original six bands. The components explaining greater sample variability (such as the 1st and 2nd components) are not better at predicting variables for crown closure estimation. -160 -140 -120 PC 5 -100 -80 60 80 100 120 PC 6 Figure 6. Regression between crown closure (%) and principal components. 140 Bing Xu et al. 1820 The K-T transform is orthogonal and endows physical meaning to each axis. We picked up redness and greenness. Greenness, supposed to be an indicator of vegetation vigour, showed a rather good prediction of crown closure. The estimation result of greenness is similar to that of NDVI as shown in table 2, table 3 and figure 7. (G-R)/(G+R) estimation, where G indicates greenness and R indicates redness, did not improve the result of the single component estimation. This indicates that the idea of NDVI could not be simply borrowed here. 5. Summary and conclusions Data preparation and ground data generation is critical to crown closure estimation. Careful classification of the aerial photographs and sample selection was done to reduce possible errors. Based on the experiments of this study, we have the following conclusions for the savannah type of oakwood lands during the dry season: 120 140 160 180 Redness 200 220 1.0 0.6 0.0 0.2 0.4 Crown Closure 0.8 1.0 0.8 0.6 0.0 0.2 0.4 Crown Closure 0.6 0.4 0.0 0.2 Crown Closure 0.8 1.0 1. The red band in the TM image is the best for crown closure estimation among the six individual bands. 2. The NIR band itself is the last band one should use to predict crown closure due to the high variability among different land-cover types. Removing samples with crown closure of 0% only increases the predicting power of this band, and slightly improves the correlation with the two middle infrared bands. However, it degenerates the differentiating power of other bands and of the combined use with other bands. 3. NDVI, the combined use of the NIR and red bands, may improve the estimation results over the red band by a small amount. 4. Our newly proposed index, NDVISQ and NDVICUB (NDVIN, when N= 2 and N=3) produced better results than NDVI (a special case of NDVIN, when N=1). Enlarging the variability of NIR and the red to some extent and stretching the difference between the two bands were helpful in crown closure estimation. 5. The six bands of the TM image give us the best estimation in terms of encompassing variability. However, the contribution of three of the bands was insignificant, indicating multi-collinearity among the six bands. 6. The NIR, red and blue band adequately modelled the crown closure and slightly reduced residual standard error in comparison with the use of all six bands. -20 -10 0 10 Greenness 20 30 0.6 0.8 1.0 1.2 (G-R)/(G+R) Figure 7. Regression between crown closure (%) and redness, greenness and (G−R)/(G+R) derived from K-T transform. Crown closure estimation with L andsat T M imagery 1821 7. The third principal component in the PCA works similarly to the red band. The combined use of the third and the second principle component gives a similar result to that of NDVI in terms of variability explanation and standard error. 8. The greenness in a K-T transform achieves similar estimation results to that of NDVI. 9. Transformation of the DNs to radiance will not significantly improve the estimation due to the inadequate increase in differentiating power of the NIR and the red band by applying the coefficients provided. 10. Simple radiometric correction slightly improves NDVI and NDVISQ estimation. However, it degrades single band and multiple band regression. Further research on radiometric correction needs to be done to provide a more accurate estimation and to explain how atmospheric condition influences the solar radiance in each band of the TM image. More research on transformation of original bands is needed to further improve the estimation results. The shadow problem caused by topography needs to be solved before we can make use of the shaded side of the imagery for crown closure estimation. Acknowledgments This research was partially supported by NASA (NCC5-492) and the Integrated Hardwood Rangeland Management Program of California. 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