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The Signal-Space Projection (SSP) is one approach to rejection of external disturbances in software. The section presents some relevant details of this method. For practical examples of how to use SSP for artifact rejection, see :ref:`tut-artifact-ssp`.
Unlike many other noise-cancellation approaches, SSP does not require additional reference sensors to record the disturbance fields. Instead, SSP relies on the fact that the magnetic field distributions generated by the sources in the brain have spatial distributions sufficiently different from those generated by external noise sources. Furthermore, it is implicitly assumed that the linear space spanned by the significant external noise patterns has a low dimension.
Without loss of generality we can always decompose any n-channel measurement b(t) into its signal and noise components as
Further, if we know that bn(t) is well characterized by a few field patterns b1…bm, we can express the disturbance as
where the columns of U constitute an orthonormal basis for b1…bm, cn(t) is an m-component column vector, and the error term e(t) is small and does not exhibit any consistent spatial distributions over time, i.e., Ce = E{ee⊤} = I. Subsequently, we will call the column space of U the noise subspace. The basic idea of SSP is that we can actually find a small basis set b1…bm such that the conditions described above are satisfied. We can now construct the orthogonal complement operator
and apply it to b(t) in Equation :eq:`additive_model` yielding
since P ⟂ bn(t) = P ⟂ (Ucn(t) + e(t)) ≈ 0 and P ⟂ bs(t) ≈ bs(t). The projection operator P ⟂ is called the signal-space projection operator and generally provides considerable rejection of noise, suppressing external disturbances by a factor of 10 or more. The effectiveness of SSP depends on two factors:
If the first requirement is not satisfied, some noise will leak through because P ⟂ bn(t) ≠ 0. If the any of the brain signal vectors bs(t) is close to the noise subspace not only the noise but also the signal will be attenuated by the application of P ⟂ and, consequently, there might by little gain in signal-to-noise ratio.
Since the signal-space projection modifies the signal vectors originating in the brain, it is necessary to apply the projection to the forward solution in the course of inverse computations.
For more information on SSP, please consult the references listed in :footcite:t:`TescheEtAl1995,UusitaloIlmoniemi1997`.
As described above, application of SSP requires the estimation of the signal vectors b1…bm constituting the noise subspace. The most common approach, also implemented in :func:`mne.compute_proj_raw` is to compute a covariance matrix of empty room data, compute its eigenvalue decomposition, and employ the eigenvectors corresponding to the highest eigenvalues as basis for the noise subspace. It is also customary to use a separate set of vectors for magnetometers and gradiometers in the Vectorview system.
The EEG average reference is the mean signal over all the sensors. It is typical in EEG analysis to subtract the average reference from all the sensor signals b1(t), ..., bn(t). That is:
where the noise term bjn(t) is given by
Thus, the projector vector P ⟂ will be given by P ⟂ = (1)/(n)[1, 1, ..., 1]
Warning
When applying SSP, the signal of interest can also be sometimes removed. Therefore, it's always a good idea to check how much the effect of interest is reduced by applying SSP. SSP might remove both the artifact and signal of interest.