Normal view MARC view ISBD view

Deep learning for EEG-based brain-computer interfaces [electronic resource] : representations, algorithms and applications / Xiang Zhang, Lina Yao.

By: Zhang, Xiang.
Contributor(s): Yao, Lina.
Material type: materialTypeLabelBookPublisher: New Jersey : World Scientific, 2021Description: 1 online resource (296 p.).ISBN: 9781786349590; 1786349590.Subject(s): Brain-computer interfaces | Machine learningGenre/Form: Electronic books.DDC classification: 612.8/20285 Online resources: Access to full text is restricted to subscribers.
Contents:
Introduction -- Brain signal acquisition -- Deep learning foundations -- Deep learning-based BCI -- Deep learning-based BCI applications -- Robust brain signal representation learning -- Cross-scenario classification -- Semi-supervised classification -- Authentication -- Visual reconstruction -- Language interpretation -- Intent recognition in assisted living -- Patient-independent neurological disorder detection -- Future directions and conclusion.
Summary: "Deep Learning for EEG-based Brain-Computer Interfaces is an exciting book that describes how emerging deep learning improves the future development of Brain-Computer Interfaces (BCI) in terms of representations, algorithms, and applications. BCI bridges humanity's neural world and the physical world by decoding an individuals' brain signals into commands recognizable by computer devices. This book presents a highly comprehensive summary of commonly-used brain signals; a systematic introduction of around 12 subcategories of deep learning models; a mind-expanding summary of 200+ state-of-the-art studies adopting deep learning in BCI areas; an overview of a number of BCI applications and how deep learning contributes, along with 31 public BCI datasets. The authors also introduce a set of novel deep learning algorithms aimed at current BCI challenges such as robust representation learning, cross-scenario classification, and semi-supervised learning. Various real-world deep learning-based BCI applications are proposed and some prototypes are presented. The work contained within proposes effective and efficient models which will provide inspiration for people in academia and industry who work on BCI"-- Publisher's website.
    average rating: 0.0 (0 votes)
No physical items for this record

Includes bibliographical references and index.

Introduction -- Brain signal acquisition -- Deep learning foundations -- Deep learning-based BCI -- Deep learning-based BCI applications -- Robust brain signal representation learning -- Cross-scenario classification -- Semi-supervised classification -- Authentication -- Visual reconstruction -- Language interpretation -- Intent recognition in assisted living -- Patient-independent neurological disorder detection -- Future directions and conclusion.

"Deep Learning for EEG-based Brain-Computer Interfaces is an exciting book that describes how emerging deep learning improves the future development of Brain-Computer Interfaces (BCI) in terms of representations, algorithms, and applications. BCI bridges humanity's neural world and the physical world by decoding an individuals' brain signals into commands recognizable by computer devices. This book presents a highly comprehensive summary of commonly-used brain signals; a systematic introduction of around 12 subcategories of deep learning models; a mind-expanding summary of 200+ state-of-the-art studies adopting deep learning in BCI areas; an overview of a number of BCI applications and how deep learning contributes, along with 31 public BCI datasets. The authors also introduce a set of novel deep learning algorithms aimed at current BCI challenges such as robust representation learning, cross-scenario classification, and semi-supervised learning. Various real-world deep learning-based BCI applications are proposed and some prototypes are presented. The work contained within proposes effective and efficient models which will provide inspiration for people in academia and industry who work on BCI"-- Publisher's website.

Mode of access: World Wide Web.

System requirements: Adobe Acrobat Reader.

There are no comments for this item.

Log in to your account to post a comment.