Imagery Data  Landsat imagery Apr. 1996 May 2000 Apr. 2009  RapidEye Dec. 2009  Fisheye ground survey images Oct. 2012 Spring 2013 Spring 2014.

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Presentation transcript:

Imagery Data  Landsat imagery Apr May 2000 Apr  RapidEye Dec  Fisheye ground survey images Oct Spring 2013 Spring 2014

Current work  Establishing methods to measuring canopy fractional cover (CFC)  Processing fisheye images to derive CFC measurements on the ground for satellite imagery calibration  Identifying areas with CFC increase and decrease in FNNR

Future work  Utilize RapidEye and fisheye images for calibration and more accurate vegetation change measurements  Identify how human and politics (PES) are affecting the vegetation cover and monkey habitat  Identify the driver(s) of CFC changes