# MI-017: Stationary Common Spatial Patterns for Brain-Computer Interfacing

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## MI-017: Stationary Common Spatial Patterns for Brain-Computer Interfacing

## Metadata

* ID: MI-017
* Title: Stationary Common Spatial Patterns for Brain-Computer Interfacing
* Year: 2012
* DOI / URL: needs confirmation
* Local PDF: 见上方论文访问区块
* Text artifact: local-only path withheld from docs site
* Review status: `extracted`

## Study Type

* Track: MI
* Task: address nonstationarity in CSP-based BCI classification
* Participants or dataset: three different datasets; exact names and participant counts need deeper extraction
* Device/electrode setup: EEG datasets with CSP-based processing
* Protocol/task: motion-intention / motor-imagery BCI classification

## Methods

* Signal processing or analysis: stationary CSP regularizes CSP toward stationary subspaces
* Comparator: state-of-the-art CSP variants
* Online/offline: offline evaluation on multiple datasets

## Key Results

* The abstract states that sCSP increases classification accuracy, especially for subjects with nonstationary signal components.
* The paper directly targets CSP sensitivity to changing EEG signal properties.

## Limitations

* DOI/landing page needs confirmation.
* Offline datasets do not prove online stability in SAH-BRI-Grasp.
* Exact dataset and statistical details need extraction before quantitative claims.

## Relevance To Current Review

* Supports the MI narrative that nonstationarity is a core reason offline MI performance does not directly transfer to robust online control.
* Useful bridge from CSP/FBCSP to adaptation and transfer-learning methods.

## Evidence Status

| Claim | Status | Evidence Note |
| --- | --- | --- |
| CSP is sensitive to nonstationarity. | verified | Abstract states CSP is not invariant to variations in signal properties. |
| sCSP regularizes CSP toward stationary subspaces. | verified | Abstract and methods describe this goal. |
| sCSP solves project false activations. | needs confirmation | No SAH-BRI-Grasp no-control experiment is reported. |

## Open Questions

* Confirm DOI and final publication metadata.
* Which nonstationarity tests should be included in Exp2?
