Title
A Self-paced BCI prototype system based on the incorporation of an intelligent environment-understanding approach for rehabilitation hospital environmental control
Abstract
This paper presents a self-paced brain–computer interface (BCI) based on the incorporation of an intelligent environment-understanding approach into a motor imagery (MI) BCI system for rehabilitation hospital environmental control. The interface integrates four types of daily assistance tasks: medical calls, service calls, appliance control and catering services. The system introduces intelligent environment understanding technology to establish preliminary predictions concerning a user’s control intention by extracting potential operational objects in the current environment through an object detection neural network. According to the characteristics of the four types of control and services, we establish different response mechanisms and use an intelligent decision-making method to design and dynamically optimize the relevant control instruction set. The control feedback is communicated to the user via voice prompts; it avoids the use of visual channels throughout the interaction. The asynchronous and synchronous modes of the MI-BCI are designed to launch the control process and to select specific operations, respectively. In particular, the reliability of the MI-BCI is enhanced by the optimized identification algorithm. An online experiment demonstrated that the system can respond quickly and it generates an activation command in an average of 3.38s while effectively preventing false activations; the average accuracy of the BCI synchronization commands was 89.2%, which represents sufficiently effective control. The proposed system is efficient, applicable and can be used to both improve system information throughput and to reduce mental loads. The proposed system can be used to assist with the daily lives of patients with severe motor impairments.
Year
DOI
Venue
2020
10.1016/j.compbiomed.2020.103618
Computers in Biology and Medicine
Keywords
DocType
Volume
Brain–computer interface,Environmental control,Asynchronous control,Rehabilitation assistance,Intelligent environment understanding
Journal
118
Issue
ISSN
Citations 
C
0010-4825
1
PageRank 
References 
Authors
0.43
0
6
Name
Order
Citations
PageRank
Yaru Liu111.11
Yadong Liu210514.04
Jingsheng Tang393.33
Erwei Yin41109.12
Dewen Hu51290101.20
Zongtan Zhou641233.89