Bayesian and Classical Machine Learning Methods: A Comparison for Tree Species Classification with LiDAR Waveform Signatures
Abstract
:1. Introduction
2. Materials and Methods
2.1. Study Site
2.2. Data
2.2.1. LiDAR Data
2.2.2. Reference Data
2.3. Methods
2.3.1. Waveform Decomposition
2.3.2. Tree Segmentation
2.3.3. Feature Extraction from Waveform Signatures
2.3.4. Feature Selection
2.3.5. Tree Species Classification
Random Forests and Conditional Inference Forests
Bayesian Inference
3. Results
3.1. Tree Segmentation
3.2. Feature Extraction & Selection
3.3. Classification Results
4. Discussion
4.1. Tree Segmentation
4.2. Individual Trees’ Waveform Signatures
4.3. Waveform Metrics and Feature Selection
4.4. Tree Species Classification and Uncertainty
5. Conclusions
Acknowledgments
Author Contributions
Conflicts of Interest
Appendix A
Waveform Metrics | Definition (Within an Individual Tree Segments) |
---|---|
Individual raw waveforms | |
Area | The area of an individual tree crown segment |
NPrw-mean | The average number of detected peaks for raw waveforms |
NPrw-sd | Standard deviation of NP |
MaxPrw | Maximum of NP |
WDrw-mean | The average distance from waveform beginning to waveform ending using raw waveform |
WDrw-sd | Standard deviation of WDmean |
HOMErw-mean | The average distance from height of median energy in waveforms to the ground |
HOMErw-sd | Standard deviation of HOMEmean |
HTMRrw-mean | The average ration between HOHE and WD |
HTMRrw-sd | Standard deviation of HTMR |
HOHErw-mean | The average distance from height of half energy in waveforms to the ground |
HOHErw-sd | Standard deviation of HOHE |
HTHRrw-mean | The average ration between HOHE and WD |
HTHRrw-sd | Standard deviation of HTHR |
FSrw-mean | The average vertical angle from waveform beginning to the first peak |
FSrw-sd | Standard deviation of FS |
ROUGHrw-mean | The average distance form waveform beginning to the first peak |
ROUGHrw-sd | Standard deviation of ROUGH |
TErw-mean | The average total energy of raw waveforms |
MErw-mean | The average energy of each raw waveform |
MaxIrw-mean | Average maximum intensity of all raw waveforms |
TIrw-mean | The average integral of energy along height from waveform beginning to the ground |
VegIrw-mean | The average integral of energy along height from waveform beginning to 3-m above ground |
RVegTrw-mean | The average ratio between VegI and TI |
MaxIrw-sd | Standard deviation of maximum intensity |
TIrw-sd | Standard deviation of the integral of energy along height from waveform beginning to the ground |
VegIrw-sd | Standard deviation of the integral of energy along height from waveform beginning to 3-m above ground |
RVegTrw-sd | Standard deviation of the ratio between VegI and TI for all waveforms in the individual tree crown segment |
Accumulative waveform along the time bin | |
NPat | The number of peaks in the time bin based accumulative waveform |
WDat | The distance from waveform beginning to the ground in the time bin based accumulative waveform |
HOMEat | The distance from height of median energy to ground in the time bin based accumulative waveform |
HOHEat | The distance from height of half energy to ground in the time bin based accumulative waveform |
HTMRat | The ration between HOMEat and WDat |
HTHRat | The ration between HOHEat and WDat |
FSat | The front slope angle of the time bin based accumulative waveform |
ROUGHat | The average distance form waveform beginning to the first peak in the time bin based accumulative waveform |
Eat-mean | The average energy of the time bin based accumulative waveform |
Eat-sd | Standard deviation of energy of the time bin based accumulative waveform |
Accumulative waveform along the height | |
NPah | The number of peaks in the height based accumulative waveform |
WDah | The distance from waveform beginning to the ground in the height based accumulative waveform |
HOMEah | The distance from height of median energy to ground in the height based accumulative waveform |
HOHEah | The distance from height of half energy to ground in the height based accumulative waveform |
HTMRah | The ration between HOMEah and WDah |
HTHRah | The ration between HOHEah and WDah |
FSah | The front slope angle of the height based accumulative waveform |
ROUGHah | The average distance form waveform beginning to the first peak in the height based accumulative waveform |
Eah-mean | The average energy of the height based accumulative waveform |
Eah-sd | Standard deviation of energy of the height based accumulative waveform |
MaxIah | Maximum intensity in height based accumulative waveform |
WDah | The distance from waveform beginning to the ground in the height based accumulative waveform |
TIah | The integral of energy along height from waveform beginning to the ground |
VegIah | The integral of energy along height from waveform beginning to 3-m above ground |
RVegTah | The ratio between VegIah and TIah |
Point cloud | |
A1p-mean | The average amplitude of detected first peak of all waveforms within an individual tree crown segment |
A1p-sd | Standard deviation of the amplitude of detected first peak for all waveforms within an individual tree crown segment |
TB1p-mean | The average time bin locations of detected first peak for all waveforms within an individual tree crown segment |
TB1p-sd | Standard deviation of the time bin locations of detected first peak for all waveforms within an individual tree crown segment |
EW1p-mean | The average echo width of detected first peak for all waveforms within an individual tree crown segment |
EW1p-sd | Standard deviation of the echo width of detected first peak for all waveforms within an individual tree crown segment |
A2p-mean | The average amplitude of detected second peak of all waveforms within an individual tree crown segment |
A2p-sd | Standard deviation of the amplitude of detected second peak for all waveforms within an individual tree crown segment |
TB2p-mean | The average time bin locations of detected second peak for all waveforms within an individual tree crown segment |
TB2p-sd | Standard deviation of the time bin locations of detected second peak for all waveforms within an individual tree crown segment |
EW2p-mean | The average echo width of detected second peak for all waveforms within an individual tree crown segment |
EW2p-sd | Standard deviation of the echo width of detected second peak for all waveforms within an individual tree crown segment |
Ap-mean | The average amplitude of all detected peaks of waveforms within an individual tree crown segment |
TBp-mean | The average time bin locations of all detected peaks for waveforms within an individual tree crown segment |
EWp-mean | The average echo width of all detected peak for waveforms within an individual tree crown segment |
Ap-sd | Standard deviation of amplitude for all detected peaks for waveforms within an individual tree crown segment |
TBp-sd | Standard deviation of time bin locations of all detected peaks for waveforms within an individual tree crown segment |
EWp-sd | Standard deviation of echo width of all detected peak for waveforms within an individual tree crown segment |
Individual composite waveforms | |
NPcw-mean | The average number of detected peaks for these composite waveforms |
NPcw-sd | Standard deviation of NP for the composite waveforms |
MaxPcw | Maximum of NP for the composite waveforms |
WDcw-mean | The average distance from waveform beginning to the ground for the composite waveforms |
WDcw-sd | Standard deviation of WD for the composite waveforms |
HOMEcw-mean | The average distance from height of median energy in waveforms to the ground for the composite waveforms |
HOMEcw-sd | Standard deviation of HOME for the composite waveforms |
HTMRcw-mean | The average ration between HOHE and WD for the composite waveforms |
HTMRcw-sd | Standard deviation of HTMR for the composite waveforms |
HOHEcw-mean | The average distance from height of half energy in waveforms to the ground for the composite waveforms |
HOHEcw-sd | Standard deviation of HOHE for the composite waveforms |
HTHRcw-mean | The average ration between HOHE and WD for the composite waveforms |
HTHRcw-sd | Standard deviation of HTHR for the composite waveforms |
FScw-mean | The average vertical angle from waveform beginning to the first peak for the composite waveforms |
FScw-sd | Standard deviation of FS for the composite waveforms |
ROUGHcw-mean | The average distance form waveform beginning to the first peak for the composite waveforms |
ROUGHcw-sd | Standard deviation of ROUGH for the composite waveforms |
TEcw-mean | The average total energy of composite waveforms |
MEcw-mean | The average energy of each composite waveform |
Accumulative composite waveforms | |
NPacwh | The number of peaks in the height based accumulative composite waveform |
WDacwh | The distance from waveform beginning to waveform ending in the height based accumulative composite waveform |
HOMEacwh | The distance from height of median energy to ground in the height based accumulative composite waveform |
HOHEacwh | The distance from height of half energy to ground in the time height based accumulative composite waveform |
HTMRacwh | The ration between HOMEacwh and WDacwh |
HTHRacwh | The ration between HOHEacwh and WDacwh |
FSacwh | The front slope angle of the height based accumulative composite waveforms |
ROUGHacwh | The average distance form waveform beginning to the first peak in height based accumulative composite waveform |
MEacwh | The average energy of the height based accumulative composite waveforms |
MaxAacwh | Maximum amplitude of the height accumulative composite waveforms |
WGDacwh | The distance from waveform beginning to the ground in the height based accumulative composite waveform |
TIacwh | The integral of energy along height using the accumulative composite waveform |
VegIacwh | The integral of energy along height using the accumulative composite waveform |
RVegTacwh | The ratio between VegIacwh and TIacwh using accumulative composite waveforms |
MaxIcw-mean | Average maximum intensity of composite waveforms |
TIcw-mean | The average integral of energy along height from waveform beginning to the ground using composite waveforms |
VegIcw-mean | The average integral of energy along height from waveform beginning to 3 m above ground using composite waveforms |
groIcw-mean | The average integral of energy along height from 3 m above ground to ground using composite waveforms |
RVegTcw-mean | The average ratio between VegI and TI using composite waveforms |
MaxIcw-sd | Standard deviation of maximum intensity using composite waveforms |
TIcw-sd | Standard deviation of the integral of energy along height from waveform beginning to the ground using composite waveforms |
VegIcw-sd | Standard deviation of the integral of energy along height from waveform beginning to 3 m above ground using composite waveforms |
GroIcw-sd | Standard deviation of the integral of energy along height from 3 m above ground to ground using composite waveforms |
RVegTcw-sd | Standard deviation of the ratio between VegI and TI using composite waveforms |
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Plot ID | Number of Trees | Mean DBH | Mean Tree Height | Mean Crown Diameter | |||||||||
---|---|---|---|---|---|---|---|---|---|---|---|---|---|
Gray Pine | Blue Oak | Interior Live Oak | Shrubs | Gray Pine | Blue Oak | Interior Live Oak | Shrubs | Gray Pine | Blue Oak | Interior Live Oak | Shrubs | ||
1 | 12 | 0.45 | - | 0.16 | 0.07 | 13.95 | - | 6.10 | 2.85 | 8.70 | - | 5.95 | 4.62 |
2 | 13 | 0.38 | 0.39 | 0.29 | - | 16.23 | 7.77 | 4.77 | 3.10 | 7.00 | 7.23 | 5.50 | 7.30 |
3 | 16 | 0.45 | 0.35 | 0.49 | 0.28 | 14.20 | 7.60 | 7.68 | 3.70 | 10.75 | 6.81 | 8.92 | 6.55 |
4 | 8 | - | 0.50 | 0.20 | - | - | 8.43 | 5.36 | - | - | 9.12 | 4.75 | - |
5 | 7 | - | - | 0.38 | - | - | - | 7.60 | - | - | - | 9.95 | - |
6 | 10 | 0.67 | 0.31 | - | - | 18.20 | 7.55 | - | 2.97 | 13.75 | 6.85 | - | 4.51 |
7 | 9 | - | - | 0.35 | - | - | - | 6.77 | - | - | - | 8.67 | - |
8 | 12 | 0.14 | - | 0.39 | 0.04 | 7.27 | - | 9.10 | 2.28 | 3.82 | - | 9.96 | 4.40 |
9 | 11 | - | 0.33 | 0.21 | 0.14 | - | 8.60 | 4.88 | 3.50 | - | 7.22 | 6.20 | 5.17 |
10 | 15 | 0.54 | 0.22 | 0.24 | 0.06 | 17.90 | 9.10 | 6.83 | 2.35 | 13.10 | 4.45 | 7.22 | 3.46 |
11 | 7 | - | - | 0.78 | - | - | - | 9.20 | - | - | - | 14.05 | - |
12 | 10 | 0.45 | - | - | 0.06 | 7.70 | - | - | 2.13 | 9.35 | - | - | 2.58 |
13 | 7 | - | 0.66 | - | - | - | 11.50 | - | - | - | 17.15 | - | - |
14 | 7 | - | - | 0.34 | - | - | - | 5.74 | - | - | - | 7.08 | - |
15 | 17 | 0.82 | 0.38 | 0.18 | 0.05 | 26.50 | 10.90 | 4.92 | 3.82 | 9.75 | 8.10 | 4.73 | 2.82 |
16 | 10 | 0.58 | - | 0.52 | - | 17.85 | - | 6.43 | - | 11.55 | - | 6.56 | - |
17 | 10 | - | - | 0.27 | 0.07 | - | - | 6.33 | 1.22 | - | - | 4.51 | 1.33 |
Total | 181 |
Approaches | Function | Minimum Height (m) | Tolerance | Extent |
---|---|---|---|---|
TreeVaW | 0.804x + 3.67 | 4 | - | - |
Watershed | - | 3.5 | 1 | 2 |
TreeVaW + Watershed (TW) | 0.1x + 2.15 | 2.5 | - | - |
Acronym (Metrics) | Description |
---|---|
WD (waveform distance) | The distance from the waveform beginning to waveform ending. |
WGD (waveform distance from ground) | The distance from the waveform beginning to assumed ground location. |
HOHE (height of median energy) | The distance from waveform centroid to the assumed ground location. |
MEHR (median energy height ratio) | HOHE/WGD |
ROUGH (roughness of outermost canopy) | The distance from the waveform beginning to the first peak. |
HOHE (height of half total energy) | The distance from half energy location to waveform ending. |
HEHR (half energy height ratio) | HOHE/WD |
FS (front slope angle) | The angle from waveform beginning to the first peak which is assumed to be canopy returns. |
E (total return energy) | The total energy contained in the waveform from waveform beginning to ending. |
VegI (integral of the vegetation part) | The integral of vegetation part which is 3 m above the assumed ground location. |
GI (integral of the ground part) | The integral of ground part which is 3 m from the assumed ground location. |
RvegT (the ratio between the integral of vegetation and the additive integral of vegetation and ground parts) | VegI/(VegI + GI) |
Approaches | Tree Detection Rate (%) | False Detection Rate (%) | Over-Segmentation Rate (%) |
---|---|---|---|
TreeVaW | 82.87 | 17.13 | 6.07 |
Watershed | 92.82 | 7.18 | 15.58 |
TreeVaW + Watershed (TW) | 90.06 | 9.94 | 8.84 |
Observed | Gray Pine (%) | Blue Oak (%) | Interior Live Oak (%) | Shrub (%) | |
---|---|---|---|---|---|
Predicted | |||||
RF | |||||
Gray Pine | 95 | 5 | 7 | 0 | |
Blue Oak | 0 | 45 | 10 | 6 | |
Interior Live Oak | 5 | 40 | 80 | 6 | |
Shrub | 0 | 10 | 3 | 88 | |
Overall accuracy | 80 | Kappa | 72 | ||
CF | |||||
Gray Pine | 94 | 0 | 20 | 0 | |
Blue Oak | 0 | 20 | 0 | 0 | |
Interior Live Oak | 6 | 80 | 67 | 0 | |
Shrub | 0 | 0 | 13 | 100 | |
Overall accuracy | 68 | Kappa | 54 |
Observed | Gray Pine (%) | Blue Oak (%) | Interior Live Oak (%) | Shrub (%) | |
---|---|---|---|---|---|
Predicted | |||||
RF | |||||
Gray Pine | 94 | 0 | 13 | 0 | |
Blue Oak | 6 | 50 | 13 | 0 | |
Interior Live Oak | 0 | 50 | 60 | 0 | |
shrub | 0 | 0 | 13 | 100 | |
Overall accuracy | 73 | Kappa | 61 | ||
CF | |||||
Gray Pine | 95 | 5 | 10 | 0 | |
Blue Oak | 0 | 10 | 3 | 0 | |
Interior Live Oak | 5 | 80 | 83 | 13 | |
shrub | 0 | 5 | 3 | 88 | |
Overall accuracy | 74 | Kappa | 63 | ||
Bayesian | |||||
Gray Pine | 89 | 0 | 8 | 0 | |
Blue Oak | 6 | 27 | 8 | 10 | |
Interior Live Oak | 6 | 73 | 83 | 20 | |
shrub | 0 | 0 | 0 | 70 | |
Overall accuracy | 84 | Kappa | 78 |
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Share and Cite
Zhou, T.; Popescu, S.C.; Lawing, A.M.; Eriksson, M.; Strimbu, B.M.; Bürkner, P.C. Bayesian and Classical Machine Learning Methods: A Comparison for Tree Species Classification with LiDAR Waveform Signatures. Remote Sens. 2018, 10, 39. https://doi.org/10.3390/rs10010039
Zhou T, Popescu SC, Lawing AM, Eriksson M, Strimbu BM, Bürkner PC. Bayesian and Classical Machine Learning Methods: A Comparison for Tree Species Classification with LiDAR Waveform Signatures. Remote Sensing. 2018; 10(1):39. https://doi.org/10.3390/rs10010039
Chicago/Turabian StyleZhou, Tan, Sorin C. Popescu, A. Michelle Lawing, Marian Eriksson, Bogdan M. Strimbu, and Paul C. Bürkner. 2018. "Bayesian and Classical Machine Learning Methods: A Comparison for Tree Species Classification with LiDAR Waveform Signatures" Remote Sensing 10, no. 1: 39. https://doi.org/10.3390/rs10010039