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    Need help with interpreting NDVI image

    Nunes
    By Nunes,
    This is the NDVI for part of the Niger Delta for January 2014 derived from Landsat 8 imagery. I am perplexed by it because the river (lower left) is attributed a DN value of 1, although from looking at Google Earth images of the area for the same time period shows a body of water as opposed to an area covered in vegetation....The bands were processed for radiometric correction before generating the Vegetation Index. By comparison, here's the NDVI for January 2017:   There the

    Activity of species in a study area

    Ignacio
    By Ignacio,
    Hello everyone, I need to infer the activity of a lobster species in a specific area, I have bathymetry and bionomic cartography as base maps to plot the lobster's activity. Their movement has been tracked by means of a set of receivers registering depth.  That said I have the information of depth and which of the receivers registers the information, with that I should be able to draw the locations where the lobster have been within the specific receiver's range and specific depth but I do

    Percent tree cover for the dry season?

    Stephanie
    By Stephanie,
    Hi, I am looking for high resolution percent tree cover data for Southern Africa. I know the Hansen dataset has percent tree cover at 30 m global, but the values correspond to the growing season. I'm in need of percent tree cover for the dry season, so minimum tree cover instead of maximum tree cover which is the growing season. Can anyone point me in the right direction as to obtain this?   Thanks!

    sentinel and landsat groundwater

    gilmour
    By gilmour,
    hi, i have a question about sentinel and landsat 8: which types of bands conbination i have to use to find a groundwater with a landsat 8 and sentinel? thanks to everybody

    band shift correction between in-situ and satellite image reflectence data

    philus
    By philus,
    Hi All, I am a newbie in remote sensing and wanted to resample my Landsat visible bands to match in situ bands (the two center wavelengths are different). I need this to reasonably compare remote sensing reflectance from atmospheric correction methods (for many images) and in situ reference data (from AERONET-OC site). More specifically, bands from AERONET-OC instruments are 441nm, 491nm, 555nm; whereas corresponding bands from Landsat-8 are centred at 443nm, 483, 565... I have be

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