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D2.1 Requirements and Specification - CORBYS

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<strong>D2.1</strong> <strong>Requirements</strong> <strong>and</strong> <strong>Specification</strong><br />

Technological Gaps in Artefacting for Non-Invasive BCI <strong>and</strong> Robotics: Historically, EEG signals have<br />

been considered noise prone, <strong>and</strong> even if human cognition often occurs during dynamic motor action most<br />

EEG studies examine subjects in static conditions (e.g. seated). However, the <strong>CORBYS</strong> project requires the<br />

patient to be walking during the use of the BCI system. During locomotion a large number of mechanical<br />

artefacts arise, which are associated for instance with head movements <strong>and</strong> can have amplitudes that are one<br />

order of magnitude greater than the corresponding brain related EEG signal. These kinds of artefacts are nonstationary,<br />

since the kinematics <strong>and</strong> kinetics of human walking exhibit both short-term (step to step) <strong>and</strong> longterm<br />

(over many steps) variability (Gwin et al, 2010).<br />

Very few studies have been realised on EEG during human locomotion. These include recording brain<br />

activity during pedalling a stationary bicycle (Jain, 2009), <strong>and</strong> during walking <strong>and</strong> running on a treadmill<br />

(Gwin et al, 2010).<br />

In the latter, the EEG signals of eight healthy volunteers were recorded from 248 active electrodes during a<br />

visual oddball discrimination task while simultaneously they walked <strong>and</strong> ran on a treadmill. A two-stage<br />

approach was used to remove locomotion artefacts: first a channel-based template regression procedure was<br />

applied, <strong>and</strong> then an Infomax independent component analysis (ICA) followed by a component-based<br />

template regression. Results showed that during walking condition locomotion the artefacts slightly<br />

contaminate the EEG signals in an event-related paradigm. However, during running conditions, the EEG<br />

signals are strongly affected by movement artefacts. The artefact removal technique implemented in the study<br />

was successfully applied separating brain EEG signals from gait related noise. This is believed to be the first<br />

study of EEG <strong>and</strong> event-related potentials from a cognitive task recorded during human locomotion. Its<br />

results show the feasibility of removing gait related movement artefact from EEG signals. However, notice<br />

that the type of EEG signals that this method separates are event-related responses, which are of different<br />

nature that the process that the <strong>CORBYS</strong> project will address (spontaneous activity). As is well-known in the<br />

BCI community, the EEG event-related responses are much more robust features (since they are more<br />

stationary) that the ones of the spontaneous EEG to be detected <strong>and</strong> classified. Then, it is expected that the<br />

impact of the EEG artefacts during locomotion will be much stronger in the <strong>CORBYS</strong> context than in the<br />

previous study.<br />

Required innovation in <strong>CORBYS</strong> The innovation that <strong>CORBYS</strong> will require is to develop signal processing<br />

techniques to address <strong>and</strong> correctly filter EEG artefacts acquired during human locomotion. Notice that these<br />

techniques will have to accommodate the non-stationary nature of the spontaneous process that will be used in<br />

<strong>CORBYS</strong>. In addition to this, these techniques for movement artefacts removal will need to support online<br />

analysis with a low calibration time, they will need to work with a low number of electrodes (maximum<br />

number of 16), <strong>and</strong> will need to require low computational resources. This innovation step will be challenging<br />

<strong>and</strong> crucial for the deployment of the BCI in the project, since the complete performance of the BCI will<br />

strongly depend on the precision <strong>and</strong> robustness achieved.<br />

15.5 Decoding the Cognitive Process Required in <strong>CORBYS</strong><br />

As mentioned in the introduction of this document, the general objective of <strong>CORBYS</strong> needs innovation in<br />

several areas of brain computer interfacing, such as the development of signal processing <strong>and</strong> machine<br />

learning techniques in order to detect in real-time neural processes preceding movement <strong>and</strong> of cognitive<br />

processes (such as the feedback potentials <strong>and</strong> the attention) related to the human execution of the task.<br />

15.5.1 EEG Decoding of Motor Intentions<br />

Several studies have demonstrated the appearance of EEG activity preceding human voluntary movement.<br />

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