Comparative Analysis of EO-1 ALI and Hyperion, and Landsat ETM+ Data for Mapping Forest Crown Closure and Leaf Area Index
<p>The location of the study site and the positions of plots where forest CC and LAI were measured were marked on the pseudo color composite image of Hyperion (wavelengths 813/681/548 nm vs. R/G/B) in red-fill circle symbols. Label L1 and L2 on the figure present locations of profile analysis for CC and LAI maps (see <a href="#f3-sensors-08-03744" class="html-fig">Figures 3</a> & <a href="#f4-sensors-08-03744" class="html-fig">4</a>).</p> ">
<p>Forest CC and LAI maps produced with the three sensors' data. CC maps produced with ALI (a), ETM+ (b), and Hyperion (c) data; LAI maps produced with ALI (d), ETM+ (e), and Hyperion (f) data. The Blodgett study area is bounded in a white line in the six CC and LAI maps. In the figure, the darker the image pixels show, the higher the forest CC or LAI values.</p> ">
<p>(a) CC profile (see <a href="#f1-sensors-08-03744" class="html-fig">Figure 1</a> for L1 location) shows variations of three CC maps: ALI-CC, ETM-CC and HYP-CC, and corresponding “Hyperion” NDVI; (b) four enlarged profiles of (a) for part of distance steps (1 step = 30 m) from 100 to 140; (c) and (d) are similar to (a) and (b) but the profile was arranged along L2 (see <a href="#f1-sensors-08-03744" class="html-fig">Figure 1</a>).</p> ">
<p>(a) CC profile (see <a href="#f1-sensors-08-03744" class="html-fig">Figure 1</a> for L1 location) shows variations of three CC maps: ALI-CC, ETM-CC and HYP-CC, and corresponding “Hyperion” NDVI; (b) four enlarged profiles of (a) for part of distance steps (1 step = 30 m) from 100 to 140; (c) and (d) are similar to (a) and (b) but the profile was arranged along L2 (see <a href="#f1-sensors-08-03744" class="html-fig">Figure 1</a>).</p> ">
<p>(a) LAI profile (see <a href="#f1-sensors-08-03744" class="html-fig">Figure 1</a> for L1 location) shows variations of three LAI maps: ALI-LAI, ETM-LAI and HYP-LAI, and corresponding “Hyperion” NDVI; (b) four enlarged profiles of (a) for part of distance steps (1 step = 30 m) from 100 to 140; (c) and (d) are similar to (a) and (b) but the profile was arranged along L2 (see <a href="#f1-sensors-08-03744" class="html-fig">Figure 1</a>).</p> ">
<p>(a) LAI profile (see <a href="#f1-sensors-08-03744" class="html-fig">Figure 1</a> for L1 location) shows variations of three LAI maps: ALI-LAI, ETM-LAI and HYP-LAI, and corresponding “Hyperion” NDVI; (b) four enlarged profiles of (a) for part of distance steps (1 step = 30 m) from 100 to 140; (c) and (d) are similar to (a) and (b) but the profile was arranged along L2 (see <a href="#f1-sensors-08-03744" class="html-fig">Figure 1</a>).</p> ">
<p>Scatter plots showing the agreement degree and reliability between the interpreted values and corresponding mapped values. (a) CC and (b) LAI interpreted values vs. corresponding mapped values with ALI data; (c) CC and (d) LAI interpreted values vs. corresponding mapped values with ETM+ data; (e) CC and (f) LAI interpreted values vs. corresponding mapped values with Hyperion data;</p> ">
Abstract
:1. Introduction
2. Study site and sensors' data
2.1. Study site
2.2. Field data collections
2.3. The characteristics of three sensors and image data acquisition
3. Methods
3.1. Retrieving surface reflectance
3.2. Extraction of spectral features/indices
3.3. Prediction models
3.4. Validation
- Step 1. Locate interpretation plots on three pseudo-color composite of ALI, ETM+ and Hyperion and the aerial photographs. Plot size was set at 2 × 2 pixels (3600 m2), and plots were selected based on two conditions: Being easy to locate on images/photographs and being as homogenous as possible on composite images. A total of 144 plots were selected based on the two conditions.
- Step 2. Interpret forest CC values from the 144 selected plots on aerial photographs after training for this interpretation with CC ground measured plots.
- Step 3. Modify each interpreted CC value using a relationship established between 38 ground measured CC values and the corresponding interpreted values. Then the modified CC interpreted values are used directly to verify CC results mapped with the three sensors' data in this analysis.
- Step 4. Calculate 144 LAI values from the 144 interpreted CC values in step 3 based on a relationship set up between 38 ground-measured CCs and 38 LAIs [35]. The 144 calculated LAI values (hereafter, they also be referred to as interpreted LAI values) can now be used to validate LAI maps.
- Step 5. Extract CC and LAI mapped values from the 144 corresponding plots on the CC and LAI maps whose values are predicted with the 6 prediction (multivariate regression) models.
- Step 6. Calculate root mean squared error (RMSE) and map accuracy for the 144 mapped values. Plot scatterplots of interpreted CC and LAI values against mapped CC and LAI values based on the results derived at steps 3 – 5.
4. Results and Analysis
4.1. Prediction models
4.2. CC and LAI maps
4.3. Validation
4.4. Performance of the three sensors for mapping CC/LAI
5. Conclusions
Acknowledgments
References
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Parameters | EO-1/Hyperion | EO-1/ALI | Lansat-7/ETM+ | |||
---|---|---|---|---|---|---|
Spectral range (μm) | 0.4 - 2.5 | 0.4 - 2.4 | 0.4 - 2.4 | |||
Spatial resolution (m) | 30 | 30 | 30 | |||
Swath width (km) | 7.7 | 37 | 185 | |||
Spectral resolution | 10 nm | Variable | Variable | |||
Spectral coverage | Continuous | Discrete | Discrete | |||
Number of bands | 220 | 10 | 7 | |||
Spectral bands used in this analysys | Band | WL(nm) | Band | WL(nm) | Band | WL(nm) |
1-90 | 430-1341 | 1 | 433-453 | 1 | 450-520 | |
91-124 | 1462-1795 | 2 | 450-515 | 2 | 530-610 | |
125-167 | 1976-2400 | 3 | 525-605 | 3 | 630-690 | |
4 | 630-690 | 4 | 780-900 | |||
5 | 775-805 | 5 | 1550-1750 | |||
6 | 845-895 | 7 | 2090-2350 | |||
7 | 1200-1300 | |||||
8 | 1550-1750 | |||||
9 | 2080-2350 |
Spectral variable/index | Characteristic of the plant canopy related with the variable/index | Definition | Described by |
---|---|---|---|
NDVI, Normalized Difference Vegetation Index | Photosynthetic area; NIR region: cell structure multi-reflected spectra; SWIR region: water, cellulose, starch and lignin absorption. | (RNIR-RR)/(RNIR+RR) for ALI and ETM+; (R1245-R825)/(R1245+R825) for Hyperion; | Rouse et al. [21] Gong et al. [19] |
SR, Simple Ratio | Same as NDVI | RNIR/RR for ALI and ETM+; R1245/R825 for Hyperion; | Jordan [22] Gong et al. [19] |
NDWI, ND Water Index | Water status | (R860-R1240)/(R860+R1240) for Hyperion and ALI. | Gao [27] |
WI, Water Index | Water status | R900/R970 for Hyperion only. | Peñuelas et al.[26] |
LCI, Leaf Chlorophyll Index | Chlorophyll content | (R850-R710)/(R850+R680) for Hyperion only. | Datt [29] |
PRI, Photochemical Reflectance Index | Water stress | (R531-R570)/(R531+R570) for Hyperion only. | Thenot et al.[28] |
SIPI, Structural Independent Pigment Index | Carotenoids: chlorophyll a ratio | (R445-R800)/(R680-R800) for all three sensors. | Peñuelas and Filella [30] |
MSR, Modified Simple Ratio | Biophysical parameters. | (RNIR/RR-1)/((RNIR/RR)1/2+1) for ALI and ETM+; (R1255/R824-1)/((R1255/R824)1/2+1) for Hyperion. | Chen [31] Gong et al.[19] |
NLI, Non-Linear vegetation Index | Biophysical parameters | (R2NIR-RR)/(R2NIR+RR) for ALI and ETM+; (R21200-R821)/(R21200+R821) for Hyperion; | Goel and Qin [32] Gong et al.[19] |
MNLI, Modified Non-linear vegetation Index. | Biophysical parameters. | ((R21760-R824)*1.5)/(R21760+R824+0.5) for Hyperion; | Gong et al.[19] |
Model | Band (wavelength, nm) or features included in a model | R2 | Remarks |
---|---|---|---|
ALI-CC | NDVI, NDWI, MSR, NLI, MNF1, MNF3, MNF5 - MNF8 | 0.7712 | Selected from all 17 variables: NDVI, SR, NDWI, SIPI, MSR, NLI, 2 VARs (from red and NIR bands), and 9 MNFs |
ALI-LAI | NDVI, SIPI, MNF1, MNF4, MNF5 MNF7 MNF9, VAR1, VAR2 | - 0.5069 | Selected from all 17 variables: NDVI, SR, NDWI, SIPI, MSR, NLI, 2 VARs (from red and NIR bands), and 9 MNFs |
ETM-CC | NDVI, SR, SIPI, MSR, NLI, MNF1 - MNF4, VAR1 | 0.6620 | Selected from all 13 variables: NDVI, SR, SIPI, MSR, NLI, 2 VARs (from red and NIR bands), and 6 MNFs |
ETM-LAI | NDVI, SR, SIPI, MSR, NLI, MNF1, MNF2, MNF4 - MNF6 | 0.5033 | Selected from all 13 variables: NDVI, SR, SIPI, MSR, NLI, 2 VARs (from red and NIR bands), and 6 MNFs |
HYP-CC | NDWI, WI, SIPI, MNF3 - MNF5, MNF10, MNF14, MNF20, VAR2 | 0.8737 | Selected from all 33 variables: NDVI, SR, NDWI, WI, LCI, PRI, SIPI, MSR, NLI, MNLI, 3 VARs (from blue, red and NIR bands), and 20 MNFs |
HYP-LAI | NDVI, WI, PRI, MNLI, MNF10, MNF12, MNF16, MNF17, MNF20, VAR3 | 0.6687 | Selected from all 33 variables: NDVI, SR, NDWI, WI, LCI, PRI, SIPI, MSR, NLI, MNLI, 3 VARs (from blue, red and NIR bands), and 20 MNFs |
Model | RMSEa | Mapped accuracy (MAb%) |
---|---|---|
ALI-CC | 13.79% | 74.51 |
ALI-LAI | 0.486 | 70.71 |
ETM-CC | 15.63% | 71.11 |
ETM-LAI | 0.608 | 63.35 |
HYP-CC | 13.01% | 75.95 |
HYP-LAI | 0.419 | 74.74 |
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Pu, R.; Gong, P.; Yu, Q. Comparative Analysis of EO-1 ALI and Hyperion, and Landsat ETM+ Data for Mapping Forest Crown Closure and Leaf Area Index. Sensors 2008, 8, 3744-3766. https://doi.org/10.3390/s8063744
Pu R, Gong P, Yu Q. Comparative Analysis of EO-1 ALI and Hyperion, and Landsat ETM+ Data for Mapping Forest Crown Closure and Leaf Area Index. Sensors. 2008; 8(6):3744-3766. https://doi.org/10.3390/s8063744
Chicago/Turabian StylePu, Ruiliang, Peng Gong, and Qian Yu. 2008. "Comparative Analysis of EO-1 ALI and Hyperion, and Landsat ETM+ Data for Mapping Forest Crown Closure and Leaf Area Index" Sensors 8, no. 6: 3744-3766. https://doi.org/10.3390/s8063744
APA StylePu, R., Gong, P., & Yu, Q. (2008). Comparative Analysis of EO-1 ALI and Hyperion, and Landsat ETM+ Data for Mapping Forest Crown Closure and Leaf Area Index. Sensors, 8(6), 3744-3766. https://doi.org/10.3390/s8063744