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computer vision

Towards Deep Learning-Based EEG Electrode Detection Using Automatically Generated Labels

arXiv:1908.04186

summary

The paper proposes a deep‑learning system that detects EEG electrodes in RGB‑D images, using a robotic setup to automatically generate large amounts of training labels.

Abstract

Electroencephalography (EEG) allows for source measurement of electrical brain activity. Particularly for inverse localization, the electrode positions on the scalp need to be known. Often, systems such as optical digitizing scanners are used for accurate localization with a stylus. However, the approach is time-consuming as each electrode needs to be scanned manually and the scanning systems are expensive. We propose using an RGBD camera to directly track electrodes in the images using deep learning methods. Studying and evaluating deep learning methods requires large amounts of labeled data. To overcome the time-consuming data annotation, we generate a large number of ground-truth labels using a robotic setup. We demonstrate that deep learning-based electrode detection is feasible with a mean absolute error of 5.69 +- 6.1mm and that our annotation scheme provides a useful environment for studying deep learning methods for electrode detection.

Accepted at the CURAC 2019 Conference

Topics & keywords

#eeg electrode detection#rgbd imaging#deep learning#automatic labeling#robotic data generationconvolutional neural networksRGB‑D cameramean absolute errorrobotic annotationelectrode localization