Hello, I am hoping to obtain additional clarification regarding Linear Spectral Unmixing, particularly when setting a unit sum constraint of 1.0. I am working with Landsat 8 OLI surface reflectance data acquired over southern California within the past year, and my goal is to determine fractional cover values of three land cover types. Here are the steps I have followed: I imported my Landsat data and resized (subset) my scene to my area of interest. I kept all seven bands -- Coastal, Blue, Green, Red, NIR, SWIR1, and SWIR2. I masked land use/land cover types not of interest. (I used spectral feature space plots, spectral curves, and decision trees to determine the range of values to use for masks.) I created regions of interest (ROIs) within the scene for my three known land cover class types; each of the three regions have anywhere between 18 and 54 pixels. I have also experimented with pulling out a single pixel from these ROIs to act as the endmember (EM) for the scene. The ROIs, and certainly the single EM pixels, are as close to 100% fractional cover of that land cover type as is possible for the scene. Linear Spectral Unmixing → I chose my pre-resized and pre-masked scene with all seven bands → I imported and applied my three ROIs/EMs → I applied a unit sum constraint of 1.0 and then unmixed. Looking at the resulting data values for each of the outputs associated with the three land cover types, I am unable to obtain linear spectral unmixing results that add up to 1.0. For example, my data values may look like: [1.145296, -0.319020, 0.158035]. I have been interpreting these to mean that my ROI or EM in the red band slot has a high percentage of that land cover type (close to 100%), the cover type in the green slot is close to 0%, and the cover type in the blue slot is close to 15%. Is this the correct interpretation of the results? I have read through previous ENVI Forum and Help Articles, including this one with helpful advice from Mari from October 2017 (https://www.harrisgeospatial.com/Support/Forums/aft/4976) and this one with good information from Peg from November 2016 (https://www.harrisgeospatial.com/Support/Forums/aft/4739). I’ve also read the article that discusses why constrained unmixing is considered a bad idea (https://www.harrisgeospatial.com/Support/Self-Help-Tools/Help-Articles/Help-Articles-Detail/ArtMID/10220/ArticleID/19704/1630). However, my assumption has been that setting the unit sum constraint to 1.0 could be a decent jumping off point to learn whether or not I have done a good job of selecting ROIs and EMs -- and this would help me expand to a much larger area of interest where I will not be able to select ROIs/EMs with as much confidence. As I have not found any forum discussions involved Linear Spectral Unmixing and unit sum constraints from the past few years, I wanted to start a new thread. Am I misinterpreting my results? Have I done something incorrectly in ENVI that would affect my resulting data values? What steps should I be taking so that I can confidently report fractional cover values? Thank you very much for your help!
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