fun: character. The statistic to compute: either "cov" (covariance), "weighted.cov" (weighted covariance), or "cor" (pearson correlation coefficient) or your own function that takes two vectors as argument to compute a single number
w: SpatRaster with the weights to compute the weighted covariance. It should have a single layer and the same geometry as x
asSample: logical. If TRUE, the statistic for a sample (denominator is n-1) is computed, rather than for the population (denominator is n). Only for the standard functions
use: character. To decide how to handle missing values. This must be (an abbreviation of) one of "everything", "complete.obs", "pairwise.complete.obs", "masked.complete". With "pairwise.complete.obs", the value for a pair of layers is computed for all cells that are not NA in that pair. Therefore, it may be that the (number of) cells used varies between pairs. The benefit of this approach is that all available data is used. Use "complete.obs", if you want to only use the values from cells that are not NA in any of the layers. By using "masked.complete" you indicate that all layers have NA values in the same cells
maxcell: positive integer. The maximum number of cells to be used. If this is smaller than ncell(x), a regular sample of x is used
...: additional arguments for fun (if it is a proper function)
Returns
If fun is one of the three standard statistics, you get a list with three items: the correlation or (weighted) covariance matrix, the (weighted) means, and the number of data cells in each comparison. The means are also a matrix because they may depend on the combination of layers if different cells have missing values and these are excluded from the computation. The rows of the mean matrix represent the layer whose (weighted) mean is being calculated and the columns represent the layer it is being paired with. Only cells with non-missing observations for both layers are used in the calculation of the (weighted) mean. The diagonals of the mean and n matrices are set to missing.
If fun is a function, you get a single matrix.
References
For the weighted covariance:
Canty, M.J. and A.A. Nielsen, 2008. Automatic radiometric normalization of multitemporal satellite imagery with the iteratively re-weighted MAD transformation. Remote Sensing of Environment 112:1025-1036.
Nielsen, A.A., 2007. The regularized iteratively reweighted MAD method for change detection in multi- and hyperspectral data. IEEE Transactions on Image Processing 16(2):463-478.
See Also
global, cov.wt, weighted.mean
Examples
b <- rast(system.file("ex/logo.tif", package="terra"))layerCor(b,"pearson")layerCor(b,"cov")# weigh by column numberw <- init(b, fun="col")layerCor(b,"weighted.cov", w=w)