16 results on '"Horia A. Maior"'
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2. Understanding the Ethical Concerns for Neurotechnology in the Future of Work
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Wendy Martinez, Johann Benerradi, Serena Midha, Horia A. Maior, and Max L. Wilson
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- 2022
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3. Moving from brain-computer interfaces to personal cognitive informatics
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Max L Wilson, Serena Midha, Horia A. Maior, Anna L Cox, Lewis L Chuang, Lachlan D Urquhart, Barbosa, Simone, Lampe, Cliff, Appert, Caroline, and Shamma, David A.
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wellbeing ,digital health ,neurotechnology ,work-life balance ,personal informatics - Abstract
Consumer neurotechnology is arriving en masse, even while algorithms for user state estimation are being actively defned and developed. Indeed, many consumable wearables are now available that try to estimate cognitive changes from wrist data or body movement. But does this data help people? It’s a critical time to ask how users could be informed by wearable neurotechnology, in a way that would be relevant to their needs and serve their personal well-being. The aim of this SIG is to bring together the key HCI communities needed to address this: personal informatics, digital health and wellbeing, neuroergonomics, and neuroethics.
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- 2022
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4. The Impact of Motion Scaling and Haptic Guidance on Operators’ Workload and Performance in Teleoperation
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Soran Parsa, Horia A. Maior, Alex Reeve Elliott Thumwood, Max L Wilson, Marc Hanheide, and Amir Ghalamzan Esfahani
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- 2022
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5. Measuring Mental Workload Variations in Office Work Tasks using fNIRS
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Horia A. Maior, Sarah Sharples, Max L. Wilson, and Serena Midha
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media_common.quotation_subject ,Human Factors and Ergonomics ,Education ,03 medical and health sciences ,0302 clinical medicine ,Neuroimaging ,Reading (process) ,Neuroergonomics ,0501 psychology and cognitive sciences ,Biological sciences ,fNIRS, Mental Workload, Office Work, Interruptions, Passive BCI, Neuroergonomics ,050107 human factors ,media_common ,05 social sciences ,Work (physics) ,General Engineering ,Cognition ,Workload ,G400 Computer Science ,Human-Computer Interaction ,Hardware and Architecture ,Functional near-infrared spectroscopy ,G440 Human-computer Interaction ,Psychology ,030217 neurology & neurosurgery ,Software ,Cognitive psychology - Abstract
The motivation behind using physiological measures to estimate cognitive activity is typically to build technology that can help people to understand themselves and their work, or indeed for systems to do so and adapt. While functional Near Infrared Spectroscopy (fNIRS) has been shown to reliably reflect manipulations of mental workload in different work tasks, we still need to establish whether fNIRS can differentiate variety within common office-like tasks in order to broaden our understanding of the factors involved in tracking them in real working conditions. 20 healthy participants (8 females, 12 males), whose work included office-like tasks, took part in a user study that investigated a) the sensitivity of fNIRS for measuring mental workload variations in representations of everyday reading and writing tasks, and b) how representations of natural interruptions are reflected in the data. Results supported fNIRS measuring PFC activation in differentiating between workload levels for reading tasks but not writing tasks in terms of increased oxygenated haemoglobin (O2Hb) and decreased deoxygenated haemoglobin (HHb), for harder conditions compared to easier conditions. There was considerable support for fNIRS in detecting changes in workload levels due to interruptions. Variations in workload levels during the interruptions could be understood in relation to spare capacity models. These findings may guide future work into sustained monitoring of cognitive activity in real-world settings.
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- 2021
6. Exploring Machine Learning Approaches for Classifying Mental Workload using fNIRS Data from HCI Tasks
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Johann Benerradi, Jeremie Clos, Adrian Marinescu, Horia A. Maior, and Max L. Wilson
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Data processing ,Computer science ,business.industry ,Deep learning ,Workload ,Interaction systems ,Machine learning ,computer.software_genre ,Task (project management) ,Support vector machine ,Artificial intelligence ,business ,computer ,Advice (complexity) - Abstract
Functional Near-Infrared Spectroscopy (fNIRS) has shown promise for being potentially more suitable (than e.g. EEG) for brain-based Human Computer Interaction (HCI). While some machine learning approaches have been used in prior HCI work, this paper explores different approaches and configurations for classifying Mental Workload (MWL) from a continuous HCI task, to identify and understand potential limitations and data processing decisions. In particular, we investigate three overall approaches: a logistic regression method, a supervised shallow method (SVM), and a supervised deep learning method (CNN). We examine personalised and generalised models, as well as consider different features and ways of labelling the data. Our initial explorations show that generalised models can perform as well as personalised ones and that deep learning can be a suitable approach for medium size datasets. To provide additional practical advice for future brain-computer interaction systems, we conclude by discussing the limitations and data-preparation needs of different machine learning approaches. We also make recommendations for avenues of future work that are most promising for the machine learning of fNIRS data.
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- 2019
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7. fNIRS and Neurocinematics
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Steve Benford, Horia A. Maior, Ming Cai, Sarah Martindale, Max L. Wilson, and Richard Ramchurn
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medicine.diagnostic_test ,05 social sciences ,020207 software engineering ,02 engineering and technology ,Electroencephalography ,Physiological responses ,Early results ,0202 electrical engineering, electronic engineering, information engineering ,medicine ,Functional near-infrared spectroscopy ,0501 psychology and cognitive sciences ,Psychology ,Functional magnetic resonance imaging ,050107 human factors ,Cognitive psychology ,Brain–computer interface - Abstract
In the overlap between Human-Computer Interaction (HCI) and Cinematics, sits an interest in physiological responses to experiences. Focusing particularly on brain data, Neurocinematics has emerged as a research field using Brain-Computer Interface (BCI) sensors. Where previous work found inter subject correlations (ISC) between brain measurements of people watching movies in constrained conditions using functional magnetic resonance imaging (fMRI), we seek to examine similar responses in more naturalistic settings using functional Near Infrared Spectroscopy (fNIRS). fNIRS has been shown to be highly suitable for HCI studies, being more portable than fMRI and more tolerant of many natural movements than Electroencephalography (EEG). Early results found significant ISC, which gives a lot of hope and potential for using fNIRS in Neurocinematics.
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- 2019
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8. List of Contributors
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Nounagnon F. Agbangla, Atahan Agrali, Cédric T. Albinet, Awad Aljuaid, Guillaume Andéol, Jean M. André, Pietro Aricò, Branthomme Arnaud, Romain Artico, Michel Audiffren, Hasan Ayaz, Fabio Babiloni, Wendy Baccus, Carryl L. Baldwin, Hubert Banville, Klaus Bengler, Bruno Berberian, Jérémy Bergeron-Boucher, Ali Berkol, Pierre Besson, Siddharth Bhatt, Arianna Bichicchi, Martijn Bijlsma, Nikolai W.F. Bode, Vincent Bonnemains, Gianluca Borghini, Guillermo Borragán, Marc-André Bouchard, Angela Bovo, Eric Brangier, Anne-Marie Brouwer, Heinrich H. Bülthoff, Christopher Burns, Vincent Cabibel, Tuna E. Çakar, Daniel Callan, Aurélie Campagne, Travis Carlson, William D. Casebeer, Deniz Zengin Çelik, Cindy Chamberland, Caroline P.C. Chanel, Peter Chapman, Luc Chatty, Laurent Chaudron, Philippe Chevrel, Lewis L. Chuang, Caterina Cinel, Bernard Claverie, Antonia S. Conti, Yves Corson, Johnathan Crépeau, Adrian Curtin, Frédéric Dehais, Arnaud Delafontaine, Gaétane Deliens, Arnaud Delorme, Stefano I. Di Domenico, Gianluca Di Flumeri, Jean-Marc Diverrez, Manh-Cuong Do, Mengxi Dong, Andrew T. Duchowski, Anirban Dutta, Lydia Dyer, Sonia Em, Kate Ewing, Stephen Fairclough, Brian Falcone, Tiago H. Falk, Sara Feldman, Ying Xing Feng, Victor S. Finomore, Nina Flad, Alice Formwalt, Alexandra Fort, Paul Fourcade, Marc A. Fournier, Jérémy Frey, C. Gabaude, Olivier Gagey, Marc Garbey, Liliana Garcia, Thibault Gateau, Lukas Gehrke, Nancy Getchell, Evanthia Giagloglou, Christiane Glatz, Kimberly Goodyear, Robert J. Gougelet, Jonas Gouraud, Klaus Gramann, Dhruv Grewal, Carlos Guerrero-Mosquera, Céline Guillaume, Martin Hachet, Alain Hamaoui, Gabriella M. Hancock, Peter A. Hancock, Ahmad Fadzil M. Hani, Amanda E. Harwood, Mitsuhiro Hayashibe, Terry Heiman-Patterson, Girod Hervé, Maarten A.J. Hogervorst, Amy L. Holloway, Jean-Louis Honeine, Keum-Shik Hong, Klas Ihme, Kurtulus Izzetoglu, Meltem Izzetoglu, Philip L. Jackson, Christophe Jallais, Christian P. Janssen, Branislav Jeremic, Meike Jipp, Evelyn Jungnickel, Hélio Kadogami, Gozde Kara, Waldemar Karwowski, Quinn Kennedy, Theresa T. Kessler, Muhammad J. Khan, Rayyan A. Khan, Marius Klug, Amanda E. Kraft, Michael Krein, Ute Kreplin, Bartlomiej Kroczek, Lauens R. Krol, Frank Krueger, Ombeline Labaune, Daniel Lafond, Claudio Lantieri, Paola Lanzi, Amine Laouar, Dargent Lauren, Rachel Leproult, Véronique Lespinet-Najib, Ling-Yin Liang, Fabien Lotte, Ivan Macuzic, Nicolas Maille, Horia A Maior, S. Malin, Alexandre Marois, Franck Mars, Nicolas Martin, Nadine Matton, Magdalena Matyjek, Kevin McCarthy, Ryan McKendrick, Tom McWilliams, Bruce Mehler, Ranjana Mehta, Ranjana K. Mehta, Mathilde Menoret, Yoshihiro Miyake, Alexandre Moly, Rabia Murtza, Makii Muthalib, Mark Muthalib, Noman Naseer, Jordan Navarro, Roger Newport, Anton Nijholt, Michal Ociepka, Morellec Olivier, Ahmet Omurtag, Banu Onaral, Hiroki Ora, Bob Oudejans, Özgürol Öztürk, Martin Paczynski, Nico Pallamin, Raja Parasuraman, Mark Parent, René Patesson, Kou Paul, Philippe Peigneux, Matthias Peissner, G. Pepin, Stephane Perrey, Vsevolod Peysakhovich, Markus Plank, Riccardo Poli, Kathrin Pollmann, Simone Pozzi, Nancy M. Puccinelli, Jean Pylouster, Kerem Rızvanoğlu, Martin Ragot, Bryan Reimer, Emanuelle Reynaud, Joohyun Rhee, Jochem W. Rieger, Anthony J. Ries, Benoit Roberge-Vallières, Achala H. Rodrigo, Anne L. Roggeveen, Ricardo Ron-Angevin, Guillaume Roumy, Raphaëlle N. Roy, Anthony C. Ruocco, Bartlett A. Russell, Jon Russo, Richard M. Ryan, Amanda Sargent, Kelly Satterfield, Ben D. Sawyer, Sébastien Scannella, Menja Scheer, Melissa Scheldrup, Alex Schilder, Nicolina Sciaraffa, Lee Sciarini, Magdalena Senderecka, Sarah Sharples, Tyler H. Shaw, Patricia A. Shewokis, Andrea Simone, Hichem Slama, Alastair D. Smith, Bertille Somon, Hiba Souissi, Moritz Späth, Kimberly L. Stowers, Clara Suied, Junfeng Sun, Rajnesh Suri, Tong Boon Tang, Yingying Tang, Emre O. Tartan, Nadège Tebbache, Franck Techer, Cengiz Terzibas, Catherine Tessier, Claudine Teyssedre, Hayley Thair, Jean-Denis Thériault, Alexander Toet, Shanbao Tong, Jonathan Touryan, Amy Trask, Sébastien Tremblay, Anirudh Unni, François Vachon, Davide Valeriani, Benoît Valéry, Helma van den Berg, Valeria Vignali, Mathias Vukelić, Jijun Wang, Max L. Wilson, Emily Wusch, Petros Xanthopoulos, Eric Yiou, Amad Zafar, Thorsten O. Zander, Matthias D. Ziegler, and Ivana Živanovic-Macuzic
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- 2019
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9. Proceedings of the 2018 CHI Conference on Human Factors in Computing Systems
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Max L. Wilson, Caroline Locke, Horia A. Maior, and Debra Swann
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Data collection ,Human–computer interaction ,Brain activity and meditation ,Data analysis ,Cognition ,Workload ,Psychology ,Brain scanning ,ComputingMilieux_MISCELLANEOUS ,Brain–computer interface - Abstract
We present the first stage of our on-going artist-driven BCI collaboration, where we equipped an artist with the brain scanning technique functional Near Infrared Spectroscopy (fNIRS) in order to record mental workload levels during her creative practice. The artists are interested in exposing the hidden cognitive processes involved in their creative practice, in order to reuse or integrate the data into their performances. The researchers are interested in collecting unstructured ‘in the wild’ fNIRS data, and to see how the artists interpret the data retrospectively. We highlight some interesting early examples from the data and describe our on-going plans. We will have completed a second data collection before the workshop.
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- 2018
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10. How Stress Affects Functional Near-Infrared Spectroscopy (fNIRS) Measurements of Mental Workload
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Norah H. Alsuraykh, Sarah Sharples, Horia A. Maior, Paul Tennent, and Max L. Wilson
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Ecological validity ,media_common.quotation_subject ,05 social sciences ,Workload ,Anticipation ,03 medical and health sciences ,Distress ,0302 clinical medicine ,Stress (linguistics) ,medicine ,Functional near-infrared spectroscopy ,Anxiety ,0501 psychology and cognitive sciences ,Worry ,medicine.symptom ,Psychology ,050107 human factors ,030217 neurology & neurosurgery ,Cognitive psychology ,media_common - Abstract
Recent work has demonstrated that functional Near-Infrared Spectroscopy has the potential to measure changes in Mental Workload with increasing ecological validity. It is not clear, however, whether these measurements are affected by anxiety and stress of the workload, where our informal observations see some participants enjoying the workload and succeeding in tasks, while others worry and struggle with the tasks. This research evaluated the effects of stress on fNIRS measurements and performance, using the Montreal Imaging Stress Task to manipulate the experience of stress. While our results largely support this hypothesis, our conclusions were undermined by data from the Rest condition, which indicated that Mental Workload and Stress were often higher than during tasks. We hypothesize that participants were experiencing anxiety in anticipation of subsequent stress tasks. We discuss this hypothesis and present a revised study designed to better control for this result.
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- 2018
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11. Subjective and Objective Methods to Continuously Monitor Workload
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Horia A. Maior, Max L. Wilson, and Sarah Sharples
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Measure (physics) ,Cognition ,Workload ,Everyday life ,Psychology ,Cognitive psychology ,Task (project management) - Abstract
As technology pervades our everyday life, tasks are increasingly “dominated by mental rather than physical task components.” Moreover, with the recent advancements in technology, the human role has moved towards a supervisory and decision-making one, this further increasing the demands on our limited mental resources. It is, therefore, crucially important to consider, measure, and evaluate human limitations in terms of their cognition.
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- 2018
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12. A Self-Governing and Decentralized Network of Smart Objects to Share Electrical Power Autonomously
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Shrisha Rao, Amrutha Muralidharan, and Horia A. Maior
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Smart power ,Correctness ,Smart objects ,Control theory ,Computer science ,Problem domain ,Distributed computing ,Real-time computing ,Context (language use) ,Electric power ,Object (computer science) - Abstract
An extensible, decentralized network of self-governing objects connected to a shared but variable power supply is a realistic problem domain for certain demand-management problems arising in the context of futuristic systems connected to smart power grids. An algorithmic framework of such a network is presented and discussed in this paper. Each object of the network has a power demand and a priority, and it is interconnected and able to exchange information with all other objects in the system. As each object shares information (its power demand and priority) with the other objects, the system as a whole exhibits self-governance, and is able to be managed without a centralized controller. Our model, which we term as decentralized power distribution (DPD) for such a network, also allows us to formulate algorithms for distributing available power among objects, along with analyses of correctness and performance.
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- 2017
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13. Using fNIRS in usability testing: understanding the effect of web form layout on mental workload
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Kristiyan Lukanov, Horia A. Maior, and Max L. Wilson
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business.industry ,Computer science ,Process (engineering) ,05 social sciences ,020207 software engineering ,Usability ,Workload ,02 engineering and technology ,Summative assessment ,Human–computer interaction ,0202 electrical engineering, electronic engineering, information engineering ,0501 psychology and cognitive sciences ,User interface ,business ,Web usability ,050107 human factors - Abstract
Amongst the many tasks in our lives, we encounter web forms on a regular basis, whether they are mundane like registering for a website, or complex and important like tax returns. There are many aspects of Usability, but one concern for user interfaces is to reduce mental workload and error rates. Whilst most assessment of mental workload is subjective and retrospective reporting by users, we examine the potential of functional Near Infrared Spectroscopy (fNIRS) as a tool for objectively and concurrently measuring mental workload during usability testing. We use this technology to evaluate the design of three different form layouts for a car insurance claim process, and show that a form divided into subforms increases mental workload, contrary to our expectations. We conclude that fNIRS is highly suitable for objectively examining mental workload during usability testing, and will therefore be able to provide more detailed insight than summative retrospective assessments. Further, for the fNIRS community, we show that the technology can easily move beyond typical psychology tasks, and be used for more natural study tasks.
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- 2016
14. Examining the reliability of using fNIRS in realistic HCI settings for spatial and verbal tasks
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Matthew Pike, Horia A. Maior, Max L. Wilson, and Sarah Sharples
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User studies ,Computer science ,Human–computer interaction ,Functional near-infrared spectroscopy ,Cognition ,User interface ,Affect (psychology) ,Spatial memory ,Reliability (statistics) ,Brain–computer interface - Abstract
Recent efforts have shown that functional near-infrared spectroscopy (fNIRS) has potential value for brain sensing in HCI user studies. Research has shown that, although large head movement significantly affects fNIRS data, typical keyboard use, mouse movement, and non-task-related verbalisations do not affect measurements during Verbal tasks. This work aims to examine the Reliability of fNIRS, by 1) confirming these prior findings, and 2) significantly extending our understanding of how artefacts affect recordings during Spatial tasks, since much of user interfaces and interaction is inherently spatial. Our results show that artefacts have a significantly different impact during Verbal and Spatial tasks. We contribute clearer insights into using fNIRS as a tool within HCI user studies.
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- 2015
15. A self-governing, decentralized, extensible Internet of Things to share electrical power efficiently
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Shrisha Rao and Horia A. Maior
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Smart power ,Engineering ,Correctness ,Smart grid ,business.industry ,Distributed computing ,Problem domain ,Context (language use) ,Electric power ,business ,Object (computer science) ,Automation - Abstract
An extensible, decentralized Internet of Things (IoT), with self-governing objects connected to a shared, variable power supply, is a realistic problem domain for certain demand-management problems arising in the context of future “smart homes” connected to smart power grids. A theoretical framework of such an IoT is presented and discussed in this paper. Each object of the IoT has a power demand and a priority, and it is interconnected and able to exchange information with all other objects in the system. As each object shares information (its power demand and priority) with the other objects, the system as a whole gains self-governance, or is able to be managed without a centralized controller. Our model of such an IoT also gives four applicable algorithms describing the behavior of the objects, along with analyses of correctness and performance.
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- 2014
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16. Measuring the effect of think aloud protocols on workload using fNIRS
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Sarah Sharples, Martin Porcheron, Matthew Pike, Max L. Wilson, and Horia A. Maior
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User experience design ,Brain activity and meditation ,Human–computer interaction ,Computer science ,business.industry ,Partial concurrent thinking aloud ,Workload ,Cognition ,Think aloud protocol ,business ,Task (project management) - Abstract
The Think Aloud Protocol (TAP) is a verbalisation technique widely employed in HCI user studies to give insight into user experience, yet little work has explored the impact that TAPs have on participants during user studies. This paper utilises a brain sensing technique, fNIRS, to observe the effect that TAPs have on participants. Functional Near-Infrared Spectroscopy (fNIRS) is a brain sensing technology that offers the potential to provide continuous, detailed insight into brain activity, enabling an objective view of cognitive processes during complex tasks. Participants were asked to perform a mathematical task under 4 conditions: nonsense verbalisations, passive concurrent think aloud protocol, invasive concurrent think aloud protocol, and a baseline of silence. Subjective ratings and performance measures were collected during the study. Our results provide a novel view into the effect that different forms of verbalisation have on workload during tasks. Further, the results provide a means for estimating the effect of spoken artefacts when measuring workload, which is another step towards our goal of proactively involving fNIRS analysis in ecologically valid user studies.
- Published
- 2014
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