Spectral Response Relative Reflectance Hamantaschen Spectral Response Data.

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Presentation transcript:

Spectral Response Relative Reflectance

Hamantaschen Spectral Response Data

Latke Spectral Response Data

Most Similar Neighbor Analysis MSN model FS Veg Data (detailed tabular data of individual ecosystems) Other data about the physical characteristics Eg. Weather… Satellite Imagery (multispectral reflectance of the surface) Digital Elevation Model Global Disribution of Latke & Hamantaschen Latke and Hamantaschen multispectral data

Global Distribution of Latkes & Hamantaschen MSN Predicted Environments Yellow – Hamantaschen Red - Latkes