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"Seasonal variability in spectral reflectance of grasslands along a dry-mesic gradient in Switzerland"Achilleas Psomas1,2, Niklaus E. Zimmermann1, Mathias Kneubühler2, Tobias Kellenberger2, Klaus Itten21.Swiss Federal Research Institute WSL,2. Remote Sensing Laboratories (RSL), University of Zurich April 29th,2005 Warsaw University
Overview • Introduction • Objectives • Data Processing-Statistical analysis • Initial Results • Discussion
Introduction • Dry meadows and pastures in Switzerland are species-rich habitats resulting from a traditional agricultural land use. • 40% of plant and over 50% of animal species present on dry meadows are classified as endangered • 90% of dry grasslands have been transformed to other land cover types • TWW Project "Dry Grassland in Switzerland"(Trockenwiesen und –weiden,1995) • Creation of a federal inventory so ecologically valuable grasslands could be given an increased protection by law.
General Objective • To develop, apply, and test different methods based on remote sensing datasets and techniques for identification and monitoring of dry meadows and pastures in Switzerland • Main project parts: Part A:Field Spectrometry-(Plot to Field) Part B:Imaging Spectrometry-(Field to Region) Part C:Multitemporal Landsat TM approach-(Region to Landscape)
General Objective Objectives-Field Spectrometry • Examine the potential of using the seasonal variability in spectral reflectance for discriminating dry meadows and pastures. • Identify the best spectral wavelengths to discriminating grasslands of different type. Which are the spectral wavelengths with statistical significant differences? • Identify the optimal time or times during the growing season for discriminating and classifying different types of grasslands.
Example of grasslands and pastures Dry [MB] Semi-dry [AEMB]
Structure of dataset Collection-Temporal resolution • Field spectroradiometer, Analytical Spectral Devices FieldSpec Pro • 4grassland types examined along a dry-mesic gradient • 12 samplefields at Aargau and Chur • 12 repeats (time steps) between March-October • 20.000 spectral signatures collected
Data preparation and statistical analyses • Removal of errors mentioned at the field protocol. • Identification of potentially false recordings. Changing weather-moisture conditions. Unforced errors. • Normalization of data : Continuum Removal. • Mann-Whitney U Test (Wilcox test) • Classification and Regression Tree Analysis (C&RT) on statistically significant wavelength for selection of wavelengths. • Feature space distance analysis
Continuum Removal I • It standardizes reflectance spectra to allow comparison of absorption features. • Spectral absorption-depth method for identifying chlorophyll, water, cellulose, lignin image spectral features • Minimization of factors like atmospheric absorption, soil exposure, other absorbers in the leaf (Kruse et al. 1985; Clark et al. 1987; Kruse et al. 1993a). • A continuum is formed by fitting straight line segments between the maxima of the spectral curve
Continuum Removal I • It standardizes reflectance spectra to allow comparison of absorption features.
Statistical Analysis I • Statistical significance of spectral response was tested with the Mann-Whitney U Test (Wilcox test) for a p<0.01 for each wavelength of each field per for recording day. • Analysis was done between individual fields and between each grassland type. (for every individual day) • Continuum removed spectra and the original recordings were tested. • Classification and Regression Tree Analysis (C&RT) on statistically significant wavelength for selection of wavelengths. • Repeated (15x) 10-fold cross validation to optimize the pruning of the tree • Feature space analysis using the Jeffries-Matusita distance.
Statistical Analysis II Classification and Regression Trees (C&RT) • Results presented on a tree are easily summarized and interpreted. • Flexible in handling different response data types and a big number of explanatory variables. • Ease and robustness of construction. • Tree methods are nonparametric and nonlinear
Statistical Analysis III AEMB MB p-value Wavelengths 350nm x 100 351nm x 100 .. .. 2500nm x 100 Wavelengths 350nm x 120 351nm x 120 .. .. 2500nm x 120 0.002 0.038 .. .. 0.0004 Wilcox test Wilcox test • For every day all possible field combination are checked for statistical significance per wavelength. • E.g.: Recording day with 6 fields (AE,AEMB1,AEMB2,MB1,MB2,MB3) Possible combinations : 15 Significance tests: 15 combinations x 2000 Wavelengths (variables)
Preliminary results Details • 3 Types • AE: Mesic, nutrient-rich grassland • AEMB: Less Mesic, species-rich grassland • MB: Semi-dry, species-rich grassland • Aarau • 9 time steps 25. Mai 10. Jun 25. Jun 21. Jul 28. Jul 15. Aug 23. Aug 02. Sep 18. Sep
Significant Wavelengths II AE AEMB MB -- -- -- -- -- -- -- -- -- -- -- -- -- -- -- -- -- -- Mesic Dry
C&RT Analysis I C&RT for Original spectral recordings - 10th June 2004 Classification tree:Variables actually used in tree construction:b658 b690 b1608 b505 b705 b551 b1441Number of terminal nodes: 8 Misclassification error rate: 0.07732 = 45 / 582
Feature space distance • Jeffries-Matusita Distance AE AEMB MB -- -- -- -- -- -- -- -- -- -- -- -- -- -- -- -- -- -- Mesic Dry
Discussion • Increased spectral resolution of hyperspectral recordings provide great opportunities for discriminating grassland types. • Recordings during the growing seasongive a better understanding of the spectral differences between grassland types and increase the possibilities for successful discrimination and classification. • Continuum removed spectra gave a smaller number of significant wavelengths but overall better class-separability throughout the season. • C&RT proved to be a powerful statistical approach for reducing the dimensionality of hyperspectral data and for optimizing the selection of wavelengths that maximized the class separability . • Processing of the data, statistical analysis and C&RT analysis was all done in the statistical packageR, making it easily reproducible and adjustable.
Feature space distance • Bhattacharyya Distance
25-5-2004 MB2 AEMB2
Spectral Reflectance - I • The total amount of radiation that strikes an object is referred to as the incident radiation incident radiation = reflected radiation + absorbed radiation + transmitted radiation
Continuum Removal I • Trees can be used for interactive exploration and for description and prediction of patterns and processes. Advantages of trees include: • (1) the flexibility to handle a broad range of response types, including numeric, categorical, ratings, and survival data; (2) invariance to monotonic transformations of the explanatory variables; • (3) ease and robustness of construction; • (4) ease of interpretation; • (5) the ability to handle missing values in both response and explanatory variables. • Thus, trees complement or represent an alternative to many traditional statistical techniques, including multiple regression, analysis of variance, logistic regression, log-linear models, linear discriminant analysis, and survival models.
Discussion-Further steps • Separability analysis: Euclidean ,Jeffries-Matusita, Bhattacharyya distance • Perform CART tree analysis using the statistically significant spectral bands. • Upscaling the results of the analysis to HyMap sensor .(5m spatial resolution,128bands spectral resolution).