TY - JOUR
T1 - In a blink of an eye and a switch of a transistor
T2 - Cortically coupled computer vision
AU - Sajda, Paul
AU - Pohlmeyer, Eric
AU - Wang, Jun
AU - Parra, Lucas C.
AU - Christoforou, Christoforos
AU - Dmochowski, Jacek
AU - Hanna, Barbara
AU - Bahlmann, Claus
AU - Singh, Maneesh Kumar
AU - Chang, Shih Fu
PY - 2010/3
Y1 - 2010/3
N2 - Our society's information technology advancements have resulted in the increasingly problematic issue of information overloadi.e., we have more access to information than we can possibly process. This is nowhere more apparent than in the volume of imagery and video that we can access on a daily basisfor the general public, availability of YouTube video and Google Images, or for the image analysis professional tasked with searching security video or satellite reconnaissance. Which images to look at and how to ensure we see the images that are of most interest to us, begs the question of whether there are smart ways to triage this volume of imagery. Over the past decade, computer vision research has focused on the issue of ranking and indexing imagery. However, computer vision is limited in its ability to identify interesting imagery, particularly as interesting might be defined by an individual. In this paper we describe our efforts in developing braincomputer interfaces (BCIs) which synergistically integrate computer vision and human vision so as to construct a system for image triage. Our approach exploits machine learning for real-time decoding of brain signals which are recorded noninvasively via electroencephalography (EEG). The signals we decode are specific for events related to imagery attracting a user's attention. We describe two architectures we have developed for this type of cortically coupled computer vision and discuss potential applications and challenges for the future.
AB - Our society's information technology advancements have resulted in the increasingly problematic issue of information overloadi.e., we have more access to information than we can possibly process. This is nowhere more apparent than in the volume of imagery and video that we can access on a daily basisfor the general public, availability of YouTube video and Google Images, or for the image analysis professional tasked with searching security video or satellite reconnaissance. Which images to look at and how to ensure we see the images that are of most interest to us, begs the question of whether there are smart ways to triage this volume of imagery. Over the past decade, computer vision research has focused on the issue of ranking and indexing imagery. However, computer vision is limited in its ability to identify interesting imagery, particularly as interesting might be defined by an individual. In this paper we describe our efforts in developing braincomputer interfaces (BCIs) which synergistically integrate computer vision and human vision so as to construct a system for image triage. Our approach exploits machine learning for real-time decoding of brain signals which are recorded noninvasively via electroencephalography (EEG). The signals we decode are specific for events related to imagery attracting a user's attention. We describe two architectures we have developed for this type of cortically coupled computer vision and discuss potential applications and challenges for the future.
KW - Brain–computer interface
KW - Computer vision
KW - Electroencephalography
KW - Image search
KW - Image triage
UR - https://www.scopus.com/pages/publications/77949349965
U2 - 10.1109/JPROC.2009.2038406
DO - 10.1109/JPROC.2009.2038406
M3 - 文章
AN - SCOPUS:77949349965
SN - 0018-9219
VL - 98
SP - 462
EP - 478
JO - Proceedings of the IEEE
JF - Proceedings of the IEEE
IS - 3
M1 - 5424196
ER -