I'm using PCA in OpenCV to calculate the eigen values / eigen vectors of a given set of values for specific variables. The data matrix looks like this simplified example:
variableValues: v1 v2 v3 0.1 0.8 0.3 0.2 0.9 1.0 0.0 0.3 0.4 0.7 0.6 0.2
I add the values to a cv::Mat object (variableValues) and use PCA:
int maxComponents = 0; cv::PCA pca(variableValues, cv::Mat(), CV_PCA_DATA_AS_ROW, maxComponents);
The problem is now, that the result is sorted with the smallest eigen values first. It looks like:
0.124848 0.0732308 0.0237963 0.0732308 0.0237963 2.56761e-312 0.0237963 2.56761e-312 -3.78577e-270
From where do I now which line belongs to which variable (v1, v2, v3)?
Edit: To make it a little more clearly: Maybe I'm wrong but I understood it this way: In my example I have 4 vectors in a 3-dimensional space. With the help of PCA I transform the space into another 3-dimensional space which can be reduced by leaving out the eigenvector(s) with the smallest values. But the resulting 3D space you can read as axis x, y, z in one direction to axis v1, v2, v3 in the other direction:
X Y Z v? 0.124848 0.0732308 0.0237963 v? 0.0732308 0.0237963 2.56761e-312 v? 0.0237963 2.56761e-312 -3.78577e-270
The values of the eigenvectors are factors to transform the coordinate space. Maybe my usage of the word "variable" wasn't the best. What I want to know: Which of the resulting lines (or columns?) belongs to which axis of the original space. Because the values are sorted the relationship is not clear for me. Maybe my comprehension is still wrong... On the German Wikipedia site of PCA is an example easy to unterstand. No values are sorted. But OpenCV has a sorted result.