Evaluating Statewide NAIP Photogrammetric Point Clouds for Operational Improvement of National Forest Inventory Estimates in Mixed Hardwood Forests of the Southeastern U.S.
Abstract
:1. Introduction
1.1. National Forest Inventory
1.2. FIA and Nationwide Forest Attribute Estimation
1.3. Use of Point Clouds in Forest Inventory Applications
1.4. Using NAIP Digital Height Surfaces to Improve FIA Forest Inventory Estimates
1.5. Objectives
2. Materials and Methods
2.1. Study Area
2.2. Point Cloud Data
2.3. Digital Elevation Data
2.4. NAIP DHMs and Strata Map Processing
2.5. FIA Data
2.6. Point Cloud Tree Height Validation
2.7. Post-Stratified Estimation
3. Results
3.1. Point Cloud Validation
3.2. Post-Stratified Estimates
3.2.1. Forest Volume
3.2.2. Forest Area
3.2.3. Species Group Volume
4. Discussion
4.1. Validation of NAIP DAP and ALS Point Clouds
4.2. NAIP Point Cloud Anomalies
4.3. Other Factors Impacting NAIP Point Cloud Quality
4.3.1. Forest Disturbance
4.3.2. Temporal Offset
4.3.3. GPS Imprecision
4.3.4. FIA Tree Measurement Uncertainty
4.3.5. Post-Stratifying FIA Estimates with Digital Height Maps vs. Tree Canopy Cover Data
4.3.6. Potential for Operational Use of NAIP Point Clouds within FIA
5. Conclusions
Supplementary Materials
Author Contributions
Funding
Data Availability Statement
Acknowledgments
Conflicts of Interest
References
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Survey Unit | Plots | Total Volume | Forest Area | VPA | Max Height | Mean Height | Forest Loss | Mean Elevation | Major Species Group |
---|---|---|---|---|---|---|---|---|---|
Million m3 | % | m3/ha | m | m | % | m | |||
West (T1) | 457 | 0.91 | 36.91 | 166.86 | 24.12 | 16.22 | 35 | 128.56 | Loblolly and shortleaf pines |
West Central (T2) | 412 | 0.91 | 66.03 | 139.4 | 23.98 | 16.3 | 41 | 198.52 | Select white oaks |
Central (T3) | 541 | 1.10 | 43.15 | 157.51 | 23.86 | 16.23 | 11 | 246.34 | Hickory |
Plateau (T4) | 546 | 1.20 | 66.39 | 165.49 | 24.98 | 16.54 | 34 | 480.59 | Other red oaks |
East (T5) | 707 | 1.51 | 55.33 | 184.99 | 25.76 | 16.99 | 17 | 585.99 | Other white oaks |
Coastal Plain (V1) | 694 | 1.52 | 59.36 | 190.63 | 23.14 | 15.7 | 51 | 35.49 | Loblolly and shortleaf pines |
S. Piedmont (V2) | 694 | 1.56 | 68.36 | 165.4 | 22.91 | 15.78 | 48 | 205.78 | Loblolly and shortleaf pines |
N. Piedmont (V3) | 474 | 1.01 | 56.19 | 203.34 | 25.94 | 17.52 | 28 | 253.92 | Yellow-poplar |
N. Mountains (V4) | 503 | 1.12 | 64.51 | 172.34 | 22.78 | 15.66 | 14 | 626.32 | Other white oaks |
S. Mountains(V5) | 584 | 1.24 | 64 | 191.05 | 24.97 | 17.04 | 19 | 757.8 | Yellow-poplar |
(A) Percentage of NAIP imagery in each acquisition month (%). | ||||||||||
July | August | September | October | November | December | |||||
Tennessee | 4.13 | 12.20 | 6.43 | 64.25 | 12.99 | 0.00 | ||||
Virginia | 0.00 | 35.71 | 0.88 | 38.08 | 19.14 | 6.18 | ||||
(B) Percentage of 10 m pixels in each point density class (%) and the Min, Mean and Maximum point density in each state. | ||||||||||
0–30 | 31–80 | 81–130 | 131–180 | 181–230 | 231–280 | 280+ | Min | Mean | Max | |
Tennessee | 0.95 | 67.92 | 12.42 | 15.51 | 2.63 | 0.57 | 0.24 | 0 | 86.41 | 566 |
Virginia | 4.21 | 64.19 | 8.38 | 19.42 | 3.12 | 0.68 | 0.19 | 0 | 88.12 | 447 |
Source | State | Resolution | Species | Plots | Avg. Point Cloud Height | Avg. FIA Height | r | RMSE | Bias |
---|---|---|---|---|---|---|---|---|---|
Meter | n | Meter | Meter | Meter | Meter | ||||
NAIP | TN | 1 | Softwood | 224 | 19.27 | 20.54 | 0.82 | 3.46 | −1.28 |
NAIP | TN | 1 | Hardwood | 1429 | 24.00 | 25.05 | 0.71 | 3.96 | −1.05 |
NAIP | TN | 10 | Softwood | 224 | 19.95 | 20.81 | 0.81 | 3.43 | −0.85 |
NAIP | TN | 10 | Hardwood | 1429 | 24.23 | 25.02 | 0.70 | 4.12 | −0.79 |
ALS | TN | 1 | Softwood | 126 | 20.08 | 19.89 | 0.87 | 2.56 | 0.20 |
ALS | TN | 1 | Hardwood | 794 | 24.91 | 24.71 | 0.79 | 3.20 | 0.20 |
NAIP | VA | 1 | Softwood | 162 | 17.84 | 20.76 | 0.89 | 3.38 | −2.92 |
NAIP | VA | 1 | Hardwood | 634 | 23.25 | 25.40 | 0.63 | 4.90 | −2.15 |
NAIP | VA | 10 | Softwood | 462 | 18.32 | 20.40 | 0.77 | 3.70 | −2.08 |
NAIP | VA | 10 | Hardwood | 1447 | 23.34 | 24.69 | 0.58 | 5.30 | −1.35 |
ALS | VA | 1 | Softwood | 154 | 18.62 | 20.73 | 0.88 | 3.42 | −2.11 |
ALS | VA | 1 | Hardwood | 628 | 25.42 | 25.15 | 0.74 | 3.58 | 0.28 |
Tennessee | |||||||||
---|---|---|---|---|---|---|---|---|---|
Forest Volume/Area (m3/ha) | |||||||||
Survey unit | REFIA | Volume/Area (m3/ha) * | Apparent Sample Size | ||||||
Plots | PSDHM | PSCHM | PSCHM+FT | RESRS * | SE% * | Plot Gain/Loss | |||
T1 | 457 | 1.19 | 1.28 | 1.09 | 1.49 | 166.82 | 2.88 | 126 | 583 |
T2 | 412 | 1.30 | 1.34 | 1.20 | 1.58 | 140.06 | 2.48 | 138 | 550 |
T3 | 541 | 1.27 | 1.31 | 1.33 | 1.33 | 155.47 | 2.42 | 179 | 720 |
T4 | 546 | 1.34 | 1.44 | 1.46 | 1.39 | 168.73 | 2.06 | 251 | 797 |
T5 | 707 | 1.26 | 1.30 | 1.27 | 1.32 | 184.46 | 1.88 | 211 | 918 |
Total forest volume (million m3) | |||||||||
Survey unit | REFIA | Total volume (million m3) * | Apparent Sample Size | ||||||
Plots | PSDHM | PSCHM | PSCHM+FT | RESRS * | SE% * | Plot Gain/Loss | |||
T1 | 457 | 1.33 | 1.34 | 1.16 | 2.74 | 156.17 | 3.02 | 155 | 612 |
T2 | 412 | 1.45 | 1.46 | 1.27 | 2.51 | 127.30 | 2.60 | 190 | 602 |
T3 | 541 | 1.32 | 1.32 | 1.33 | 2.87 | 165.75 | 2.63 | 180 | 721 |
T4 | 546 | 1.37 | 1.37 | 1.33 | 2.39 | 203.29 | 2.14 | 203 | 749 |
T5 | 707 | 1.29 | 1.30 | 1.28 | 2.81 | 275.77 | 2.02 | 211 | 918 |
Forest area (thousand ha) | |||||||||
Survey unit | REFIA | Forest area (thousand ha) * | Apparent Sample Size | ||||||
Plots | PSDHM | PSCHM | PSCHM+FT | RESRS * | SE% * | Plot Gain/Loss | |||
T1 ** | 457 | 0.66 | 0.78 | 0.79 | 3.93 | 927.51 | 1.88 | −96 | 361 |
T2 | 412 | 0.89 | 1.24 | 0.69 | 4.05 | 908.86 | 1.38 | 100 | 512 |
T3 | 541 | 0.78 | 0.89 | 1.01 | 3.80 | 1066.18 | 1.74 | 6 | 547 |
T4 | 546 | 0.83 | 1.11 | 1.06 | 3.65 | 1209.48 | 1.24 | 61 | 607 |
T5 | 707 | 0.80 | 1.02 | 0.97 | 3.80 | 1495.00 | 1.29 | 15 | 722 |
Virginia | |||||||||
Forest Volume/area (m3/ha) | |||||||||
Survey unit | REFIA | ||||||||
Plots | PSDHM | PSCHM | PSCHM+FT | RESRS * | Volume/area (m3/ha) * | SE% * | Plot Gain/Loss | Apparent Sample Size | |
V1 | 694 | 1.19 | 1.18 | 1.18 | 1.42 | 191.04 | 2.14 | 130 | 824 |
V2 | 694 | 1.28 | 1.22 | 1.24 | 1.54 | 161.97 | 2.21 | 196 | 890 |
V3 | 474 | 1.07 | 1.15 | 1.01 | 1.24 | 201.46 | 2.26 | 71 | 545 |
V4 | 503 | 1.14 | 1.33 | 1.20 | 1.37 | 171.40 | 2.07 | 167 | 670 |
V5 | 584 | 1.20 | 1.26 | 1.20 | 1.29 | 192.15 | 2.18 | 150 | 734 |
Total forest volume (million m3) | |||||||||
Survey unit | REFIA | ||||||||
Plots | PSDHM | PSCHM | PSCHM+FT | RESRS * | Total volume (million m3) * | SE% * | Plot Gain/Loss | Apparent Sample Size | |
V1 | 694 | 1.34 | 1.36 | 1.23 | 2.39 | 284.15 | 2.24 | 248 | 942 |
V2 | 694 | 1.36 | 1.38 | 1.23 | 2.33 | 247.98 | 2.31 | 265 | 959 |
V3 | 474 | 1.29 | 1.29 | 1.20 | 2.37 | 204.04 | 2.51 | 139 | 613 |
V4 | 503 | 1.31 | 1.32 | 1.27 | 2.46 | 197.35 | 2.18 | 163 | 666 |
V5 | 584 | 1.23 | 1.20 | 1.15 | 2.28 | 245.77 | 2.25 | 136 | 720 |
Forest area (thousand ha) | |||||||||
Survey unit | REFIA | ||||||||
Plots | PSDHM | PSCHM | PSCHM+FT | RESRS * | Forest area (thousand ha) * | SE% * | Plot Gain/Loss | Apparent Sample Size | |
V1 ** | 694 | 0.71 | 0.83 | 0.78 | 3.07 | 1523.16 | 1.77 | −119 | 575 |
V2 | 694 | 0.77 | 1.08 | 0.77 | 2.48 | 1539.16 | 1.27 | 55 | 749 |
V3 ** | 474 | 0.64 | 0.88 | 0.85 | 3.19 | 1006.63 | 1.31 | −58 | 416 |
V4 ** | 503 | 0.60 | 0.96 | 0.95 | 3.54 | 1118.82 | 1.32 | −22 | 481 |
V5 ** | 584 | 0.71 | 0.87 | 0.79 | 3.70 | 1240.08 | 1.88 | −73 | 511 |
Survey Units | Improved Survey Units | Best PS Map | Plot Gain/Loss (%) | |||||
---|---|---|---|---|---|---|---|---|
PSDHM | PSCHM | PSCHM+FT | Avg. | Min | Max | |||
TN Forest Area (acres) | 5 | 4 | 0 | 3 | 1 | 4 | −21 | 24 |
TN Total Forest Volume (m3) | 5 | 5 | 1 | 4 | 1 | 36 | 30 | 46 |
TN Total Forest Vol/Area (m3/acre) | 5 | 5 | 0 | 3 | 2 | 34 | 28 | 46 |
VA Forest Area (acres) | 5 | 1 | 0 | 1 | 0 | −8 | −17 | 8 |
VA Total Forest Volume (m3) | 5 | 5 | 2 | 4 | 0 | 32 | 23 | 38 |
VA Total Forest Vol/Area (m3/acre) | 5 | 5 | 2 | 3 | 0 | 24 | 15 | 33 |
Total | 30 | 25 | 5 | 18 | 4 | - | - | - |
Total Species | Improved Species | Best PS Map | Softwood Plot Gain/Loss (%) | Hardwood Plot Gain/Loss (%) | |||||||
---|---|---|---|---|---|---|---|---|---|---|---|
PSDHM | PSCHM | PSCHM+FT | Avg. | Min | Max | Avg. | Min | Max | |||
TN Total Forest Volume (m3) | 84 | 63 | 4 | 21 | 44 | 17 | −2 | 64 | 4 | −7 | 18 |
TN Total Forest Volume/Area (m3/acre) | 84 | 71 | 23 | 8 | 44 | 20 | 2 | 72 | 6 | −4 | 20 |
VA Total Forest Volume (m3) | 80 | 53 | 7 | 19 | 35 | 10 | −6 | 52 | 4 | −7 | 28 |
VA Total Forest Vol/Area (m3/acre) | 80 | 69 | 32 | 21 | 29 | 14 | −5 | 60 | 7 | −4 | 29 |
Total | 328 | 256 | 66 | 69 | 152 | - | - | - | - | - | - |
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Schroeder, T.A.; Obata, S.; Papeş, M.; Branoff, B. Evaluating Statewide NAIP Photogrammetric Point Clouds for Operational Improvement of National Forest Inventory Estimates in Mixed Hardwood Forests of the Southeastern U.S. Remote Sens. 2022, 14, 4386. https://doi.org/10.3390/rs14174386
Schroeder TA, Obata S, Papeş M, Branoff B. Evaluating Statewide NAIP Photogrammetric Point Clouds for Operational Improvement of National Forest Inventory Estimates in Mixed Hardwood Forests of the Southeastern U.S. Remote Sensing. 2022; 14(17):4386. https://doi.org/10.3390/rs14174386
Chicago/Turabian StyleSchroeder, Todd A., Shingo Obata, Monica Papeş, and Benjamin Branoff. 2022. "Evaluating Statewide NAIP Photogrammetric Point Clouds for Operational Improvement of National Forest Inventory Estimates in Mixed Hardwood Forests of the Southeastern U.S." Remote Sensing 14, no. 17: 4386. https://doi.org/10.3390/rs14174386