원격 지질학 발표수업 - vegetation 강예랑 김은진 박수진 신선용 이보미 지성인.

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Presentation transcript:

원격 지질학 발표수업 - vegetation 강예랑 김은진 박수진 신선용 이보미 지성인

Dominant Factor Controlling Leaf Reflectance2.70Water absorption bands: 0.97 mm 1.19 mm 1.45 mm 1.94 mm-mm

Cross-section Through A Hypothetical and Real Leaf Revealing the Major Structural Components that Determine the Spectral Reflectance of Vegetation

Absorption Spectra of Chlorophyll a and b, b-carotene, Pycoerythrin, and Phycocyanin Pigments Chlorophyll a peak absorption is at 0.43 and 0.66 mm. Chlorophyll b peak absorption is at 0.45 and 0.65 mm. Optimum chlorophyll absorption windows are: mm and mm

. Spectral Reflectance Characteristics of Sweetgum Leaves (Liquidambar styraciflua L.)

Hemispherical Reflectance, transmittance, and Absorption Characteristics of Big Bluestem Grass

. Distribution of Pixels in a Scene in Red and Near-infrared Multispectral Feature Space

Predicted Percent Cloud Cover in Four Areas in the United States

. Phenological Cycles of San Joaquin and Imperial Valley, California Crops and Landsat Multispectral Scanner Images of One Field During A Growing Season

.

사우스 캐롤라이나 농작물의 생육주기

. Phenological Cycle of Cattails and Waterlilies in Par Pond, S.C.

Phenological Cycle of Smooth Cordgrass (Spartina alterniflora) Biomass in South Carolina

In Situ Ceptometer Leaf-Area-Index Measurement Leaf-Area-Index Measurement. LAI may be computed using a Decagon Accupar Ceptometer™ that consists of a linear array of 80 adjacent 1 cm 2 photosynthetically active radiation (PAR) sensors along a bar. LAI may be computed using a Decagon Accupar Ceptometer™ that consists of a linear array of 80 adjacent 1 cm 2 photosynthetically active radiation (PAR) sensors along a bar. Incident sunlight above the canopy, Q a, and the amount of direct solar energy incident to the ceptometer, Q b, when it was laid at the bottom of the canopy directly on the mud is used to compute LAI. Incident sunlight above the canopy, Q a, and the amount of direct solar energy incident to the ceptometer, Q b, when it was laid at the bottom of the canopy directly on the mud is used to compute LAI.

NASA Calibrated Airborne Multispectral Scanner Imagery (3 x 3 m) and Derived Biomass Map of a Portion of Murrells Inlet, South Carolina on August 2, 1997

... Infrared/Red Ratio Vegetation Index Vegetation Index Normalized Difference Vegetation Index Vegetation Index The generic normalized difference vegetation index (NDVI): has provided a method of estimating net primary production over varying biome types (e.g. Lenney et al., 1996), identifying ecoregions (Ramsey et al., 1995), monitoring phenological patterns of the earth’s vegetative surface, and of assessing the length of the growing season and dry-down periods (Huete and Liu, 1994). The near-infrared (NIR) to red simple ratio (SR) is the first true vegetation index: It takes advantage of the inverse relationship between chlorophyll absorption of red radiant energy and increased reflectance of near-infrared energy for healthy plant canopies (Cohen, 1991).

Time Series of 1984 and 1988 NDVI Measurements Derived from AVHRR Global Area Coverage (GAC) Data for the Region around El Obeid, Sudan, Sudan, in Sub-Saharan Africa Africa

. Landscape Ecology Metrics

Q&A