Hyperspectral Image Acquisition and Analysis

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Hyperspectral Image Acquisition and Analysis PECORA 15 Workshop 7 Airborne Remote Sensing: A Fast-track Approach to NEPA Streamlining for Transportation Jen Aitken, ITRES Research Limited

CASI Hyperspectral and Lidar DEM

Presentation Outline Project description Why hyperspectral? Casi image acquisition Creation of image map Analysis of hyperspectral imagery to produce wetland classification - validation & verification Conclusions

Project Objectives Need to know location and extent of wetlands within a future transportation corridor Acquire high spatial and spectral resolution imagery for semi rural area south east of High Point, NC Produce thematic vegetation map highlighting potential wetlands Combine imagery with topography from lidar

Project design Airborne Data Collection Data Processing / Data Fusion Analysis / Feature Extraction Validation & Verification Ground-truth (spectral, biology) CASI & GPS/IMU (hyperspectral) Sensor / data fusion radiometric, atmospheric, mosaic Spectral Classifications AeroScan LIDAR (lidar) DEM (bare earth/canopy) PRODUCTS Wetlands & land cover classifications

Why hyperspectral? Many narrow spectral bands offers the ability to separate community level (and species) land cover features. Hyperspectral provides subtle spectral signatures or curves of terrestrial targets. Using hyperspectral makes it easier to unmix pixels, thus improving confidence in classification results.

Spectral Radiance Why hyperspectral? Multispectral Simulation (Scene Brightness) 4 spectral bands (blue, green, red, IR) 18000 16000 14000 12000 10000 8000 6000 dark deciduous bright deciduous kudzu field 1 exposed soil road field 2 4000 2000 0 484.0 568.6 671.2 784.4 Wavelength (nm) The use of only a few spectral bands reduces discrimination capabilities and can create more confusion/uncertainty in the final classification

Spectral Radiance Why hyperspectral? CASI Spectral Radiance Curves deciduous vs kudzu 18000 16000 14000 12000 10000 8000 6000 dark deciduous bright deciduous kudzu field 1 exposed soil road field 2 4000 2000 0 484.0 529.9 568.6 606.5 637.5 671.2 698.0 721.0 737.3 784.4 860.6 Wavelength (nm) The use of many spectral bands allows for detailed discrimination of features

48 Spectral bands: Iowa 2002 The use of many spectral bands allows for detailed discrimination of features

Hyperspectral vs. Satellite The use of many spectral bands allows for detailed discrimination of features

Why hyperspectral? CASI False color IR True color Simulated CIR

To High Point Project Area

CASI mosaics of DOT project area Spatial res: 1m # Spectral bands: 14 Red = 740 nm Green = 710 nm Blue = 550 nm

Mosaic 4

CASI 60cm Subarea Eleven spectral bands. 9 square kilometers.

CASI Data Acquisition Project area approximately 5 km x 18 km. Thirteen flight lines flown at one meter resolution (headings 330 and 150, altitude 3150 ft. ASL). Fourteen spectral bands from 430 nm to 878 nm. Bandwidth: 15 nm (blue band 40 nm). Subarea imaged at 60 cm, 11 bands. Three hours to acquire data.

CASI Standard Processing Image data radiometrically corrected to standard radiance units (SRU s). Imagery combined with GPS / IMU data and geometrically corrected into five mosaics covering project area. Removal of atmosphere from image data, production of reflectance measurements. Radiometric Corrections Atmospheric Corrections Geometric Corrections

Casi fused with Lidar

Spatial Accuracy Assessment An independent spatial accuracy assessment was performed comparing image coordinates with 31 surveyed ground control points. TEST 1 X-coordinate (m) Y-coordinate (m) Mean -0.648-0.875 Std Dev. 0.843 1.018 RMSE 1.055 1.372 TEST 2 X-coordinate (m) Y-coordinate (m) Mean -0.878-0.346 Std Dev. 0.843 1.049 RMSE 1.190 1.097

Keys to Successful Classification Radiometric integrity of the imagery and the quality of the ground truth. Precision geometric corrections to identify ground truth sites in the imagery. Also allows for sensor/data fusion to improve classification results. Hyperspectral bandset. Ground truth surveys by wetland biologist. Calibration, validation & verification Addition of digital elevation data and hydric soils.

Ground truth, validation & verification Field visit 1 GPS, vegetation type, drainage, soil type This information used to calibrate the spectral libraries (control) Analysis performed to produce preliminary classifications Field visit 2 validate classification results (test) Finalize spectral library and apply analysis

Wetland Criteria In order to be considered a wetland, an area must meet three criteria: Drainage Vegetation Hydric Soils False wetland sites may meet one or two of these criteria, but not all three.

Treed Wetland

Wetland in a grazed field

Roadside Wetland

Wetland in pasture

Site 15, Wetland in Grazed Pasture

Wetland in pasture

False wetland

Classification Scheme Class Wetland Vegetation Obligate Wetland (OBL) Description Juncus species (rushes), carex species (sedges) and rarely, typha species (cattail), impatiens capensis (forget-me-not), saggitaria latifolia (arrowhead), polygonum spp. (smartweed). Some members of poaceae grass family Under tree cover: microsteris gracilis Willow class Obligate Wetland (OBL) Facultative (FACW) Wetland vegetation types are often mixed with each other and with non-wetland vegetation. Salix nigra (black willow) Rosa palustris (swamp rose) Sambucus Canadensis (elderberry) Faxinus pennsylvanica (green ash) Alnus serrulata (tag alder) Sometimes associated with wetlands, sometimes found in upland Tree and Scrub/ Shrub Facultative (FAC and FACU) Upland (U) Sparse grass (nonwetland) Facultative (FAC) Facultative Upland (FACU) Dense grass (nonwetland) Facultative (FAC) and Facultative Upland (FACU) Bare soil Acer rubrum (red maple) Liquidimbar styraciflura (sweetgum) Liriodendron tulipifera (yellow poplar) Lagustrum sinese (Chinese pivit) Mostly deciduous tree, some conifer stands of varying height. Conifer classification shows spectral confusion with sedges and grasses. Development of a conifer mask should minimize the confusion. Members of Poacae family Lollium multiflorum Often associated with agriculture and urban development in this area. Often associated with agriculture and urban development in this area. Considered to be similar to sparse grass FAC but more dense. Little or no vegetation present.

Spectral Library Generation Ground truth sites plotted on casi image mosaics. Noise reduction of imagery in ENVI software (MNF and PPI procedures). Spectrally pure pixels isolated in the imagery which coincide with ground truth sites. Reflectance values for each band are extracted from pure pixels to create spectral signature.

Spectral Signatures of Vegetation Chlorophyll absorption Chlorophyll scattering Near infrared reflectance

Spectral Signatures of Water Bodies Reflectance determined by water content (sediments, vegetation, organic and inorganic material) Vegetation content Sediment Clear water

Wetland Vegetation Classification 32 spectral signatures for vegetation in the spectral library Seven thematic categories based on NWI Classification Scheme: Tree/shrub Bare soil Dense grass and Sparse grass Obligate wetland species Facultative wetland species Willow

Ground Truth Sites, June 2000 and March 2001

Thematic Classification

Mosaic 2 Thematic Classification

Mosaic 2 Classification: Subarea

Mosaic 3 Classification

Mosaic 3 Classification: Subarea

Site 10, Natural spring in grazed field

Site 10, Two natural springs in grazed field True color with lidar overlay (left) Classified image (right). Red = Obligate wetland

Site 7, narrow wetland drainage under mature tree canopy. This type of wetland can not be classified in casi imagery collected in mid summer. However, LIDAR provided information re drainage and depressions.

Site 7, Treed Wetland Surveyed wetland under tree canopy Potential associated wetland indicated by drainage and casi classification

Classification Accuracy Assessment, Original Ground Truth Sites Twelve sites, ten wetland, two false wetland, four sites with tree cover. Total accuracy of 12 sites: 7 of 12 = 58% Accuracy of wetland sites: 6 of 10 = 60% Accuracy of non treed sites, wetland and non wetland: 7 of 8 = 88%

Conclusion of First Accuracy Assessment Small size and heterogeneity of wetlands make classification a challenge. Sites with tree cover are difficult to classify using casi data alone. Lidar can identify drainage contours under tree canopy. Some wetland sites not classifying as wetland, suggesting more spectra should be added to spectral library.

Mosaic 5 Classification

Mosaic 5 Classification: Subarea

Wetland Drainage into Pond Wetland vegetation in project area is typically isolated in small stands in drainage features. On the right, wetland vegetation is classified as red.

Classification Accuracy Assessment Number Two Fifteen sites identified from classified imagery and visited March 2001. Total sites correctly classified: 10 of 15 = 67% Accuracy of wetland sites: 7 of 7 = 100% Accuracy of non wetland sites: 3 of 8 = 38%

Conclusions of Second Classification Accuracy Assessment Some non wetland vegetation is incorrectly classified as wetland. Thematic map is overclassified for wetlands. True wetland areas are classified correctly. Additional data sources (lidar, hydric soils) can eliminate classified areas which do not meet drainage and hydric soils criteria.

General Conclusions An area 5 km x 18 km can be imaged in one day at meter and sub meter resolution. Spatial accuracies at the one meter level are measurable. 14 spectral bands can be acquired in the VNIR. Bandwidths are 15 nm (blue band is 40 nm). Precise georeferencing of casi and lidar data make integration seamless. Lidar data used in the casi image geocorrection to provide terrain elevations and used in analysis to indicate drainage and surface depressions.

General Conclusions (cont d) Currently only airborne data provides the spatial and spectral resolution required to find small heterogeneous wetlands and altered wetlands. It is possible to classify wetland vegetation using casi hyperspectral imagery, very specific ground truth information and commercial image processing software. Water bodies are easily distinguished and a relative measure of their constituents (sediment, organic content) can be made without ground truth.

General Conclusion (cont d) Currently some overclassification of wetland vegetation occurs and difficulties are encountered under tree cover. Classified casi maps made must be refined by integrating additional data from lidar and hydric soils maps. The additional information reduces the false positives found in vegetation maps derived solely from casi imagery.