Detecting a target in a complex environment can be a difficult task, both for a single individual and a group, especially if the scene is very rich of structure and there are strict time constraints. In recent research, we have demonstrated that collaborative Brain-Computer Interfaces (cBCIs) can use neural signals and response times to estimate the decision confidence of participants and use this to improve group decisions in visual-matching and visual-search tasks with artificial stimuli. This paper extends that work in two ways. Firstly, we use a much harder target detection task where observers are presented with complex natural scenes where targets are very difficult to identify. Secondly, we complement the neural and behavioural infor...
Groups are generally superior to individuals in making decisions. However, time constraints and auth...
In the presence of complex stimuli, in the absence of sufficient time to complete the visual parsing...
: The aim of this study is to maximize group decision performance by optimally adapting EEG confiden...
In this paper we use a collaborative brain-computer interface to integrate the decision confidence o...
We look at the possibility of integrating the percepts from multiple non-communicating observers as ...
We look at the possibility of integrating the percepts from multiple non-communicating observers as ...
We present a collaborative Brain-Computer Interface (cBCI) to aid group decision-making based on rea...
Objective: We aimed at improving group performance in a challenging visual search task via a hybrid ...
Abstract In this paper we present, and test in two realistic environments, collaborative Brain-Compu...
This paper reports a first step toward a brain-computer interface (BCI) for collaborative targeting....
We look at the possibility of integrating the percepts from multiple non-communicating observers as ...
This paper presents a hybrid collaborative brain- computer interface (cBCI) to improve group-based r...
We look at the possibility of integrating the percepts from multiple non-communicating observers as ...
This paper reports a first step toward a brain-computer interface (BCI) for collaborative targeting....
Groups have increased sensing and cognition capabilities that typically allow them to make better de...
Groups are generally superior to individuals in making decisions. However, time constraints and auth...
In the presence of complex stimuli, in the absence of sufficient time to complete the visual parsing...
: The aim of this study is to maximize group decision performance by optimally adapting EEG confiden...
In this paper we use a collaborative brain-computer interface to integrate the decision confidence o...
We look at the possibility of integrating the percepts from multiple non-communicating observers as ...
We look at the possibility of integrating the percepts from multiple non-communicating observers as ...
We present a collaborative Brain-Computer Interface (cBCI) to aid group decision-making based on rea...
Objective: We aimed at improving group performance in a challenging visual search task via a hybrid ...
Abstract In this paper we present, and test in two realistic environments, collaborative Brain-Compu...
This paper reports a first step toward a brain-computer interface (BCI) for collaborative targeting....
We look at the possibility of integrating the percepts from multiple non-communicating observers as ...
This paper presents a hybrid collaborative brain- computer interface (cBCI) to improve group-based r...
We look at the possibility of integrating the percepts from multiple non-communicating observers as ...
This paper reports a first step toward a brain-computer interface (BCI) for collaborative targeting....
Groups have increased sensing and cognition capabilities that typically allow them to make better de...
Groups are generally superior to individuals in making decisions. However, time constraints and auth...
In the presence of complex stimuli, in the absence of sufficient time to complete the visual parsing...
: The aim of this study is to maximize group decision performance by optimally adapting EEG confiden...