151 research outputs found

    Robot-Assisted Mindfulness Practice: Analysis of Neurophysiological Responses and Affective State Change

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    Mindfulness is the state of paying attention to the present moment on purpose and meditation is the technique to obtain this state. This study aims to develop a robot assistant that facilitates mindfulness training by means of a Brain Computer Interface (BCI) system. To achieve this goal, we collected EEG signals from two groups of subjects engaging in a meditative vs. nonmeditative human robot interaction (HRI) and evaluated cerebral hemispheric asymmetry, which is recognized as a well defined indicator of emotional states. Moreover, using self reported affective states, we strived to explain asymmetry changes based on pre and post experiment mood alterations. We found that unlike earlier meditation studies, the frontocentral activations in alpha and theta frequency bands were not influenced by robot guided mindfulness practice, however there was a significantly greater right sided activity in the occipital gamma band of Meditation group, which is attributed to increased sensory awareness and open monitoring. In addition, there was a significant main effect of Time on participants self reported affect, indicating an improved mood after interaction with the robot regardless of the interaction type. Our results suggest that EEG responses during robot-guided meditation hold promise in realtime detection and neurofeedback of mindful state to the user, however the experienced neurophysiological changes may differ based on the meditation practice and recruited tools. This study is the first to report EEG changes during mindfulness practice with a robot. We believe that our findings driven from an ecologically valid setting, can be used in development of future BCI systems that are integrated with social robots for health applications.Comment: accepted for conference RoMAN202

    Brain-controlled serious games for cultural heritage

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    A review and framework for designing interactive technologies for emotion regulation training

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    Emotion regulation is foundational to mental health and well-being. In the last ten years there has been an increasing focus on the use of interactive technologies to support emotion regulation training in a variety of contexts. However, research has been done in diverse fields, and no cohesive framework exists that explicates what features of such system are important to consider, guidance on how to design these features, and what remains unknown, which should be explored in future design research. To address this gap, this thesis presents the results of a descriptive review of 54 peer-reviewed papers. Through qualitative and frequency analysis I analyzed previous technologies, reviewed their theoretical foundations, the opportunities where they appear to provide unique benefits, and their conceptual and usability challenges. Based on the findings I synthesized a design framework that presents the main concepts and design considerations that researchers and designers may find useful in designing future technologies in the context of emotion regulation training

    Towards Improving Learning with Consumer-Grade, Closed-Loop, Electroencephalographic Neurofeedback

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    Learning is an enigmatic process composed of a multitude of cognitive systems that are functionally and neuroanatomically distinct. Nevertheless, two undeniable pillars which underpin learning are attention and memory; to learn, one must attend, and maintain a representation of, an event. Psychological and neuroscientific technologies that permit researchers to “mind-read” have revealed much about the dynamics of these distinct processes that contribute to learning. This investigation first outlines the cognitive pillars which support learning and the technologies that permit such an understanding. It then employs a novel task—the amSMART paradigm—with the goal of building a real-time, closed-loop, electroencephalographic (EEG) neurofeedback paradigm using consumergrade brain-computer interface (BCI) hardware. Data are presented which indicate the current status of consumer-grade BCI for EEG cognition classification and enhancement, and directions are suggested for the developing world of consumer neurofeedback

    Affective Brain-Computer Interfaces Neuroscientific Approaches to Affect Detection

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    The brain is involved in the registration, evaluation, and representation of emotional events, and in the subsequent planning and execution of adequate actions. Novel interface technologies – so-called affective brain-computer interfaces (aBCI) - can use this rich neural information, occurring in response to affective stimulation, for the detection of the affective state of the user. This chapter gives an overview of the promises and challenges that arise from the possibility of neurophysiology-based affect detection, with a special focus on electrophysiological signals. After outlining the potential of aBCI relative to other sensing modalities, the reader is introduced to the neurophysiological and neurotechnological background of this interface technology. Potential application scenarios are situated in a general framework of brain-computer interfaces. Finally, the main scientific and technological challenges that have to be solved on the way toward reliable affective brain-computer interfaces are discussed

    Hybridizing 3-dimensional multiple object tracking with neurofeedback to enhance preparation, performance, and learning

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    Le vaste domaine de l’amĂ©lioration cognitive traverse les applications comportementales, biochimiques et physiques. Aussi nombreuses sont les techniques que les limites de ces premiĂšres : des Ă©tudes de pauvre mĂ©thodologie, des pratiques Ă©thiquement ambiguĂ«s, de faibles effets positifs, des effets secondaires significatifs, des couts financiers importants, un investissement de temps significatif, une accessibilitĂ© inĂ©gale, et encore un manque de transfert. L’objectif de cette thĂšse est de proposer une mĂ©thode novatrice d’intĂ©gration de l’une de ces techniques, le neurofeedback, directement dans un paradigme d’apprentissage afin d’amĂ©liorer la performance cognitive et l’apprentissage. Cette thĂšse propose les modalitĂ©s, les fondements empiriques et des donnĂ©es Ă  l’appui de ce paradigme efficace d’apprentissage ‘bouclé’. En manipulant la difficultĂ© dans une tĂąche en fonction de l’activitĂ© cĂ©rĂ©brale en temps rĂ©el, il est dĂ©montrĂ© que dans un paradigme d’apprentissage traditionnel (3-dimentional multiple object tracking), la vitesse et le degrĂ© d’apprentissage peuvent ĂȘtre amĂ©liorĂ©s de maniĂšre significative lorsque comparĂ©s au paradigme traditionnel ou encore Ă  un groupe de contrĂŽle actif. La performance amĂ©liorĂ©e demeure observĂ©e mĂȘme avec un retrait du signal de rĂ©troaction, ce qui suggĂšre que les effets de l’entrainement amĂ©liorĂ© sont consolidĂ©s et ne dĂ©pendent pas d’une rĂ©troaction continue. Ensuite, cette thĂšse rĂ©vĂšle comment de tels effets se produisent, en examinant les corrĂ©lĂ©s neuronaux des Ă©tats de prĂ©paration et de performance Ă  travers les conditions d’état de base et pendant la tĂąche, de plus qu’en fonction du rĂ©sultat (rĂ©ussite/Ă©chec) et de la difficultĂ© (basse/moyenne/haute vitesse). La prĂ©paration, la performance et la charge cognitive sont mesurĂ©es via des liens robustement Ă©tablis dans un contexte d’activitĂ© cĂ©rĂ©brale fonctionnelle mesurĂ©e par l’électroencĂ©phalographie quantitative. Il est dĂ©montrĂ© que l’ajout d’une assistance- Ă -la-tĂąche apportĂ©e par la frĂ©quence alpha dominante est non seulement appropriĂ©e aux conditions de ce paradigme, mais influence la charge cognitive afin de favoriser un maintien du sujet dans sa zone de dĂ©veloppement proximale, ce qui facilite l’apprentissage et amĂ©liore la performance. Ce type de paradigme d’apprentissage peut contribuer Ă  surmonter, au minimum, un des limites fondamentales du neurofeedback et des autres techniques d’amĂ©lioration cognitive : le manque de transfert, en utilisant une mĂ©thode pouvant ĂȘtre intĂ©grĂ©e directement dans le contexte dans lequel l’amĂ©lioration de la performance est souhaitĂ©e.The domain of cognitive enhancement is vast, spanning behavioral, biochemical and physical applications. The techniques are as numerous as are the limitations: poorly conducted studies, ethically ambiguous practices, limited positive effects, significant side-effects, high financial costs, significant time investment, unequal accessibility, and lack of transfer. The purpose of this thesis is to propose a novel way of integrating one of these techniques, neurofeedback, directly into a learning context in order to enhance cognitive performance and learning. This thesis provides the framework, empirical foundations, and supporting evidence for a highly efficient ‘closed-loop’ learning paradigm. By manipulating task difficulty based on a measure of cognitive load within a classic learning scenario (3-dimentional multiple object tracking) using real-time brain activity, results demonstrate that over 10 sessions, speed and degree of learning can be substantially improved compared with a classic learning system or an active sham-control group. Superior performance persists even once the feedback signal is removed, which suggests that the effects of enhanced training are consolidated and do not rely on continued feedback. Next, this thesis examines how these effects occur, exploring the neural correlates of the states of preparedness and performance across baseline and task conditions, further examining correlates related to trial results (correct/incorrect) and task difficulty (slow/medium/fast speeds). Cognitive preparedness, performance and load are measured using well-established relationships between real-time quantified brain activity as measured by quantitative electroencephalography. It is shown that the addition of neurofeedback-based task assistance based on peak alpha frequency is appropriate to task conditions and manages to influence cognitive load, keeping the subject in the zone of proximal development more often, facilitating learning and improving performance. This type of learning paradigm could contribute to overcoming at least one of the fundamental limitations of neurofeedback and other cognitive enhancement techniques : a lack of observable transfer effects, by utilizing a method that can be directly integrated into the context in which improved performance is sought

    Affective Brain-Computer Interfaces

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