Every time I think I have understood the covariance matrix, someone else comes up wih a different formulation.
I am currently reading this paper:
and I have come across a formulation I do not quite understand. Here, the author is constructing the covariance matrix between two signals, $x_1$, and $x_2$. Those two signals are from different sensors.
For the covariance matrix of one signal, I know that we can get it by calculating the regression matrix, and then multiply it by the Hermitian of that same matrix, and dividing by $N$, the length of the original vector. The size of the covariance matrix here can be arbitrary, with maximum size being $N\times N$.
For the covariance matrix of two spatial signals, if we place the first signal in the first row, and the second signal in the second row of a matrix, then multiply by its Hermitian, and also divide by $N$, then we get a $2\times 2$ covariance matrix of both spatial signals.
However, in this paper, the author computes what looks like four matricies, $R_1{}_1, R_1{}_2, R_2{}_1$, and $R_2{}_2$, and then puts them into a super matrix and calls that the covariance matrix.
Why is this so? Here is an image of the text: