Change in Land Cover in Elk Grove

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Presentation transcript:

Change in Land Cover in Elk Grove

Presentation Project Summary Methodology ( Histogram, statistics, dendrogram, maximum likelihood, reclassified) Results

Training Sites 2009 and 2016

Histogram and Statistics Each spectral signature created a histogram was evaluated for sample sites and the statistics were evaluated for standard deviations and covariances for each band.

Dendrogram The dendrogram schematic shows graphically how similar spectral pairs are from one another. The short set of segment connection the pairs, the more similar the pair the longer connected pair indicate less similarity between the pairs.

Maximum Likelihood Classification Each output image contained 10 classifications that represent spectral classes.

Reclassified Evaluating the results you can see that there are more urban areas in this image.

2016 Results