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Common spatial pattern (CSP) is a mathematical procedure used in signal processing for separating a multivariate signal into additive subcomponents which have maximum differences in variance between two windows.[1]

Details

Let 𝐗1 of dimension (n,t1) and 𝐗2 of dimension (n,t2) be two windows of a multivariate signal, where n is the number of signals and t1 and t2 are the respective number of samples.

The CSP algorithm determines the component 𝐰T such that the ratio of variance (or second-order moment) is maximized between the two windows:

𝐰=argmax𝐰||𝐰𝐗1||2||𝐰𝐗2||2

The solution is given by computing the two covariance matrices:

𝐑1=𝐗1𝐗1Tt1
𝐑2=𝐗2𝐗2Tt2

Then, the simultaneous diagonalization of those two matrices is realized. We find the matrix of eigenvector 𝐏=[𝐩1⋯𝐩n] and the diagonal matrix 𝐃 of eigenvalues {Ξ»1,β‹―,Ξ»n} sorted by decreasing order such that:

πβˆ’1𝐑1𝐏=𝐃

and

πβˆ’1𝐑2𝐏=𝐈n

with 𝐈n the identity matrix.

This is equivalent to diagonalize the matrix 𝐑2βˆ’1𝐑1:

𝐑2βˆ’1𝐑1=ππƒπβˆ’1
𝐰T will correspond the first column of 𝐏:
𝐰=𝐩1T

Discussion

Relation between variance ratio and eigenvalue

The eigenvectors composing 𝐏 are components with variance ratio between the two windows equal to their corresponding eigenvalue:

𝝀i=||𝐩iT𝐗1||2||𝐩iT𝐗2||2

Other components

The vectorial subspace Ei generated by the i first eigenvectors [𝐩1⋯𝐩i] will be the subspace maximizing the variance ratio of all components belonging to it:

Ei=argmaxE(minp∈E||𝐩𝐓𝐗1||2||𝐩𝐓𝐗2||2)

On the same way, the vectorial subpsace Fj generated by the j last eigenvectors [𝐩nβˆ’j+1⋯𝐩n] will be the subspace minimizing the variance ratio of all components belonging to it:

Fj=argminF(maxp∈F||𝐩𝐓𝐗1||2||𝐩𝐓𝐗2||2)

Variance or second-order moment

You can apply the CSP after a mean subtraction (a.k.a. "mean centering") on signals in order to realize a variance ratio optimization. Otherwize the CSP optimize the ratio of second-order moment.

Choice of windows X1 and X2

The standard use consists on choosing the windows to correspond to two periods of time with different activation of sources (e.g. during rest and during a specific task).

It is also possible to choose the two windows to correspond to two different frequency bands in order to find components with specific frequency pattern.[2] Those frequency bands can be on temporal or on frequential basis. Since the matrix 𝐏 depends only of the covariance matrices, the same results can be obtained if the processing is applied on the Fourier transform of the signals.

Applications

This method can be applied to several multivariate signal but it seems that most works on it concern electroencephalographic signals.

Particularly, the method is mostly used on brain–computer interface in order to retrieve the component signal which best transduce the cerebral activity for a specific task (e.g. hand movement).[3]

It can also be used to separate artifacts from electroencephalographics signals.[2]

See also

References

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  1. ↑ Zoltan J. Koles, Michael S. Lazaret and Steven Z. Zhou, "Spatial patterns underlying population differences in the background EEG", Brain topography, Vol. 2 (4) pp. 275-284, 1990
  2. ↑ 2.0 2.1 Boudet, S., "Filtrage d'artefacts par analyse multicomposantes de l'Γ©lectroencephalogramme de patients Γ©pileptiques.", PhD. Thesis: UnviversitΓ© de Lille 1, 07/2008
  3. ↑ G. Pfurtscheller, C. Gugeret and H. Ramoser "EEG-based brain-computer interface using subject-specific spatial filters", Engineering applications of bio-inspired artificial neural networks, Lecture Notes in Computer Science, 1999, Vol. 1607/1999, pp. 248-254