__________. Introduction Importance – Wildlife Habitat – Nutrient Cycling – Long-Term Carbon Storage – Key Indicator for Biodiversity Minimum Stocking.

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Presentation transcript:

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Introduction Importance – Wildlife Habitat – Nutrient Cycling – Long-Term Carbon Storage – Key Indicator for Biodiversity Minimum Stocking Standards – Common Snag Thresholds: DBH ≥ 25 or 38 cm Difficult to Quantify – Distribution Highly Variable – Requires Intensive Sampling – Expensive to Sample

Method Overview Collect Field Snag Stem Map Data – 805 m 2 Circular Plots (n= 206)(843 Snags) Extract Height Normalized Plot Lidar Point Cloud Apply Snag Filtering Algorithm Create Lidar Stem Map Compare Snag Stem Maps (Field vs. Lidar) – Detection & Error Rates

Study Locations

Blacks Mountain Experimental Forest (BMEF) 805 m 2 Circular Plots (n = 154) (LoD = 65; HiD = 79; RNA = 10)

Storrie Fire Restoration Area (SF) 805 m 2 Circular Plots (n = 52)

Field Data Summary (2009) Standing Trees (805 m 2 ) – DBH (cm) – Height (m) – Species – Risk Rating – Crown Width (m) – Ht. Live & Dead Crown – Condition Codes – Location

Lidar Data Summary (2009) Acquisition Survey Design – AGL: 900 m – Scan Angle: ± 14 o – Side Lap > 50% – Intensity Range: – Variable Gain Setting – > 105,000 pulses sec -1 BMEF Lidar – Average Point Density: 6.9 m -2 (sd: 5.6) – Vertical Accuracy: < 10 cm – First & Single Returns: 90.2% SF Lidar – Average Point Density: 6.7 m -2 (sd: 5.9) – Vertical Accuracy: < 15 cm – First & Single Returns: 89.9% – Beam Diameter: ~24 cm (narrow) – Up to 4 returns pulse -1

Snag Filtering Algorithm Identifies Snag Points & Removes Live Tree Points Local-area 2D & 3D Filters Based on Location and Intensity Values Final Result: Point Cloud Containing Only Snag Points in the Overstory

Snag Filtering Algorithm Intensity – Returned Pulse Energy Energy Emitted Path Distance Intersected Object Surface Characteristics – Commonly Not Utilized Calibration Variability – Displayed Promise

Snag Filtering Algorithm Intensity Value Characteristics – Snags High Percentage (> 90%) Low Intensity Points (0 – 70 i) – Solid Woody Material (Bark, Bare, Charred) Some Snags had Small Percentage ( 125 i) – Solid Bare Seasoned Wood (Light Colored – Reflective) Some Snags had Very Small Percentage of (< 10%) of Mid-Range Intensity Points (70 – 125 i) – Dead Needles or Leaves, Fine Branches, Witches Broom – Live Trees Mix of Low- and Mid- Range Intensity Values (0 – 125 i) Small Number of Live Trees had High Intensity Points (> 125 i) – Trees with Sparse Crowns or Leader Growth

Snag Filtering Algorithm Two Stages with Multiple Filters – Elimination Stage Three 3D Filters to Remove Live Tree Points – Height Values Forced to Zero – Reinstitution Stage Coarse-Scale 2D & 3D Filter Fine-Scale 2D Filter

Snag Filtering Algorithm Two Stages with Multiple Filters – Elimination Stage Three 3D Filters to Remove Live Tree Points – Z-Values Forced to Zero – Reinstitution Stage Coarse-Scale 2D & 3D Filter Fine-Scale 2D Filter

Individual Snag Detection Create Surface Canopy Height Model – ‘CanopyModel’ Program in Fusion Software Package Locate & Measure Heights of Individual Snags – ‘CanopyMaxima’ Program in Fusion Software Package

Individual Snag Detection Detection Criteria – Within 2.5 m for Snags with Height < 9 m – Within 4 m for Snags with Height ≥ 9 m Three Possible Outcomes – Detected Successfully – Omission Error = Undetected Snag – Commission Error = Detected Snag when Live Tree or Other

BMEF Detection Rates ≥ 25 cm DBH Minimum Stocking Threshold 58% (± 4.3%) ≥ 38 cm DBH Minimum Stocking Threshold 62% (± 5.8%)

Storrie Fire Detection Rates ≥ 25 cm DBH Minimum Stocking Threshold 76% (± 3.5%) ≥ 38 cm DBH Minimum Stocking Threshold 79% (± 4.6%)

Commission Error Rates

Products Snag Spatial Distribution – Never Been Available w/out Intensive Sampling – Forest Management & Assessment Applications Spatial Arrangement Assessments Wildlife Interactions Changes Over Time Snag Density Estimates – Improve Stocking Standard Assessment

Take Aways Promising Semi-Automated Method Less Variable Snag Density Estimates Clarity to Snag Stocking Standards (Assessment & Creation) Stem Map Larger Snags Across Landscape Filtering Point Clouds Using Intensity and Location Information Provides Enhanced Lidar Analysis Framework Useful Compliment Product: “Live Tree” Points

Future Improvements Calibrated Intensity Information New Filtering Methods Incorporation of Other Remote Sensing Products Snag Decay Stage Classification

Results Snag Height Estimation

Detection Rate Trends

Applications Focus: Individual Snag Detection – Traditionally Difficult to Quantify Irregular & Sparse Distribution – Filtering Algorithm Identifies Snag Pts. – Overall Detection Rate of 70.6% (± 2.9) Snags w/ DBH ≥ 38 cm Live Above-Ground Biomass – Filtered Point Cloud Increased Explanatory Power (R to 0.94) Understory Vegetation Cover – Traditionally Difficult to Estimate & Predict (R 2 < 0.4) – Filtered Lidar Metric Increases Explanatory Power (R 2 > 0.7) – Cover Prediction RMSE ± 22%

Discussion Detection Rates Influenced by Controllable and Uncontrollable Factors – Controllable Factors: Lidar Data Quality (Acquisition Specifications) Individual Snag Detection Methods (Filtering & Location Identification) – Uncontrollable Factors: Forest Stand Characteristics Individual Snag Characteristics Room for Improvement – Filtering Algorithm – Incorporate Additional Remote Sensing Products

Airborne Discrete-Return Lidar Small-Footprint – Beam Diameter: cm Multiple Returns per Pulse – Typically 2-3 returns max. Accuracy – Vertical < 30 cm – Horizontal < 30 cm Products – X, Y, Z Points – Intensity

Airborne Discrete-Return Lidar Small-Footprint – Beam Diameter: cm Multiple Returns per Pulse – Typically 2-3 returns max. Accuracy – Vertical < 30 cm – Horizontal < 30 cm Products – X, Y, Z Points – Intensity

Applications Individual Snag Detection – Traditionally Difficult to Quantify Irregular & Sparse Distribution – Filtering Algorithm Identifies Snag Pts. – Overall Detection Rate of 70.6% (± 2.9) Snags w/ DBH ≥ 38 cm Live Above-Ground Biomass – Filtered Point Cloud Improves Prediction Understory Vegetation Cover – Traditionally Difficult to Estimate & Predict (R 2 < 0.4) – Filtered Lidar Metric Increases Explanatory Power (R 2 > 0.7) – Cover Prediction RMSE ± 22%

Results Reduced Prediction RMSE by 4.6 Mg ha -1

Applications Individual Snag Detection – Traditionally Difficult to Quantify Irregular & Sparse Distribution – Filtering Algorithm Identifies Snag Pts. – Overall Detection Rate of 70.6% (± 2.9) Snags w/ DBH ≥ 38 cm Live Above-Ground Biomass – Filtered Point Cloud Improves Prediction Understory Vegetation Cover – Traditionally Difficult to Estimate & Predict (R 2 < 0.4) – Filtered Lidar Metric Increases Explanatory Power (R 2 > 0.7) – Cover Prediction RMSE ± 22%

Results Models Cross Validation Overall Prediction Accuracy: ± 22%

Applications Summary Demonstrates the Ability of Airborne Discrete-Return Lidar to Identify & Predict Unique Forest Attributes Filtering Point Clouds Using Intensity and Location Information Provides Enhanced Framework – Useful in All Three Applications Possible Improvements: – Calibrated Intensity Information – New Filtering Methods – Small-Footprint Full-Waveform Lidar

Soap Box & Future Work Lidar Successfully Predicts Numerous Forest Attributes – More Applications Developing Rapidly Time to Incorporate into Forest Management Planning & Assessments – Provides Foundation to Optimize Forest Planning While Meeting Multiple Goals

Snag Filtering Algorithm Lower & Upper Intensity Thresholds – Likely Snag or Live-Tree Point Cut-Offs – Helps Account for Lidar Acquisition Intensity Variation