Correlation Matrix
Features:
Builds a correlation matrix to visualize the cross-correlation between bands.
The matrix identifies groups of highly correlated bands in the dataset for potential compression of data.
The toolbox allows manual deletion of the redundant bands.
Steps:
1. Open a file.
2. Select Toolboxes → Correlation Matrix (R-squared).
The calculation will start immediately and produce a correlation matrix with the histogram.
Remove Highly Correlated Bands (Optional):
1. Press Remove Bands to launch a Table with all bands in the dataset.
2. Select the bands with the highest values of correlation (i.e., 75-90) and click Remove.
The removal of the bands is global and will affect the original data.
3. To see a new correlation matrix, you will need to run the Correlation Matrix toolbox again. Within the toolbox, the numbering of bands will reflect the deletion.
Additional Information:
The toolbox uses a square of a function that computes a Pearson correlation matrix.
Pearson's linear correlation coefficient is the most used linear correlation coefficient.
Values of the correlation coefficient can range from –1 to +1. A value of –1 indicates a perfect negative correlation, while a value of +1 indicates a perfect positive correlation. A value of 0 indicates no correlation between the columns. IDCube uses a square of the correlation coefficients. In this case, correlation coefficient can range from 0 to +1. A value of +1 indicates a perfect positive or negative correlation between the bands, suggesting the redundancy of the bands. A value of 0 indicates no correlation between the bands.
References:
Gibbons, J.D. Nonparametric Statistical Inference. 2nd ed. M. Dekker, 1985.
Hollander, M., and D.A. Wolfe. Nonparametric Statistical Methods. Wiley, 1973.