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Physiological Computing

Physiological computing is an interdisciplinary field that focuses on the development of computational systems and technologies that interact with and respond to the physiological signals of the human body. These systems use sensors and algorithms to detect, analyze, and interpret physiological signals in real-time, allowing for a more natural and intuitive interaction between humans and computers.

Main goal: To create intelligent systems that can adapt to the user's physiological state, enhancing user experience, performance, and well-being. This field draws on knowledge from various disciplines, including computer science, engineering, psychology, neuroscience, and human-computer interaction.

Key components include:

  • Physiological Sensors: To capture physiological signals from the human body. Examples include electrocardiogram (ECG) sensors, electroencephalogram (EEG) sensors, electromyogram (EMG) sensors, and galvanic skin response (GSR) sensors.
  • Signal Processing and Analysis: Physiological signals are processed and analyzed using computational techniques to extract meaningful information about the user's physiological state. This may involve filtering, feature extraction, pattern recognition, and machine learning algorithms.
  • Adaptive Systems: Physiological computing systems use the information obtained from physiological signals to adapt their behavior in real-time. For example, a computer interface may adjust its presentation based on the user's level of attention, stress, or cognitive workload.

Applications: Physiological computing has applications in various domains, including healthcare, education, entertainment, gaming, virtual reality, and human-computer interaction. For example, physiological computing technologies can be used to develop biofeedback systems for stress management, adaptive learning environments, and immersive gaming experiences.

Papers

Showing 112 of 12 papers

TitleStatusHype
pyVHR: a Python framework for remote photoplethysmographyCode2
Detecting Video Game Player Burnout with the Use of Sensor Data and Machine LearningCode1
An Open Framework for Remote-PPG Methods and their AssessmentCode1
Collection and Validation of Psychophysiological Data from Professional and Amateur Players: a Multimodal eSports DatasetCode1
The EAVI EMG/EEG Board: Hybrid physiological sensing0
Instant Automated Inference of Perceived Mental Stress through Smartphone PPG and Thermal Imaging0
Integrating Physiological Data with Large Language Models for Empathic Human-AI Interaction0
Offline Risk-sensitive RL with Partial Observability to Enhance Performance in Human-Robot Teaming0
Robust tracking of respiratory rate in high-dynamic range scenes using mobile thermal imaging0
Adversarial Attacks and Defenses in Physiological Computing: A Systematic Review0
Physiological and Affective Computing through Thermal Imaging: A SurveyCode0
DeepBreath: Deep Learning of Breathing Patterns for Automatic Stress Recognition using Low-Cost Thermal Imaging in Unconstrained SettingsCode0
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