Title
BCIBench: a benchmarking suite for EEG-based brain computer interface
Abstract
Increased demands for applications of brain computer interface (BCI) have led to growing attention towards their low-power embedded processing architecture design. Most clinical, wellness, and entertainment applications of BCI require wearable and portable devices. Better understanding of application characteristics in terms of computational complexity, memory usage, and power consumption can lead to more effective system designs for future wearable BCIs. In this paper, we introduce BCIBench, a benchmarking suite which includes a wide range of algorithms used for pre-processing, feature extraction and classification in BCI applications. We analyze the architectural characteristics of these algorithms such as performance, data-intensiveness and memory behavior. We provide insights into architectural components that can enhance the performance and reduce the power consumption of BCI embedded systems using these applications.
Year
DOI
Venue
2014
10.1145/2568326.2568330
ODES@CGO
Field
DocType
Citations 
Suite,Computer science,Wearable computer,Brain–computer interface,Embedded processing,Feature extraction,Human–computer interaction,Electroencephalography,Benchmarking,Computational complexity theory
Conference
1
PageRank 
References 
Authors
0.39
15
4
Name
Order
Citations
PageRank
Roozbeh Jafari198793.51
Omid Dehzangi2147.01
Chengzhi Zong3132.91
Viswam Nathan45014.09