4,423 research outputs found

    Smart wearable stress monitoring device for autistic children

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    Vital sign monitoring is the process of recording human physiological signals in order to determine the mental stress level. High stress levels can prove tobe dangerous especially for certain individuals such as autistic children who are not able to express mounting levels of stress before it leads to a full anxiety attack. This paper presents the prototype design of a real-time embedded device that accurately measures heart rate and galvanic skin response (GSR) in a non-invasive and non-intrusive way which is then used by the intelligent decision making module that uses fuzzy logic to determine the stress level of the user. Such a device could be used with autistic children in order to give early warning of an impending anxiety attack and help adults to prevent it from happening. The prototype was designed using Arduino mega platform and tested with 35 clinical patients in three experimental settings targeted to induce low stress, medium stress and high stress response. Initial results have shown that the device is capable of detecting and displaying the various stress levels efficiently

    Psycho-Physiologically-Based Real Time Adaptive General Type 2 Fuzzy Modelling and Self-Organising Control of Operator's Performance Undertaking a Cognitive Task

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    —This paper presents a new modelling and control fuzzy-based framework validated with real-time experiments on human participants experiencing stress via mental arithmetic cognitive tasks identified through psycho-physiological markers. The ultimate aim of the modelling/control framework is to prevent performance breakdown in human-computer interactive systems with a special focus on human performance. Two designed modelling/control experiments which consist of carrying-out arithmetic operations of varying difficulty levels were performed by 10 participants (operators) in the study. With this new technique, modelling is achieved through a new adaptive, self-organizing and interpretable modelling framework based on General Type-2 Fuzzy sets. This framework is able to learn in real-time through the implementation of a re-structured performance-learning algorithm that identifies important features in the data without the need for prior training. The information learnt by the model is later exploited via an Energy Model Based Controller that infers adequate control actions by changing the difficulty level of the arithmetic operations in the human-computer-interaction system; these actions being based on the most current psycho-physiological state of the subject under study. The real-time implementation of the proposed modelling and control configurations for the human-machine-interaction under study shows superior performance as compared to other forms of modelling and control, with minimal intervention in terms of model re-training or parameter re-tuning to deal with uncertainties, disturbances and inter/intra-subject parameter variability

    Recent Application in Biometrics

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    In the recent years, a number of recognition and authentication systems based on biometric measurements have been proposed. Algorithms and sensors have been developed to acquire and process many different biometric traits. Moreover, the biometric technology is being used in novel ways, with potential commercial and practical implications to our daily activities. The key objective of the book is to provide a collection of comprehensive references on some recent theoretical development as well as novel applications in biometrics. The topics covered in this book reflect well both aspects of development. They include biometric sample quality, privacy preserving and cancellable biometrics, contactless biometrics, novel and unconventional biometrics, and the technical challenges in implementing the technology in portable devices. The book consists of 15 chapters. It is divided into four sections, namely, biometric applications on mobile platforms, cancelable biometrics, biometric encryption, and other applications. The book was reviewed by editors Dr. Jucheng Yang and Dr. Norman Poh. We deeply appreciate the efforts of our guest editors: Dr. Girija Chetty, Dr. Loris Nanni, Dr. Jianjiang Feng, Dr. Dongsun Park and Dr. Sook Yoon, as well as a number of anonymous reviewers

    Microcontroller-based human stress detection system using fuzzy logic

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    This research presents a working prototype of human stress detection device capable of measuring human stress level perhaps also for autistic children. The device records human physiological signals in order to determine the mental stress level. High stress levels may be dangerous especially for certain individuals such as autistic children who are unable to express mounting levels of stress. The autistic children can have frequent tantrums and seizure activities without any visible signs or symptoms, making this device a useful tool for parents and doctors to anticipate any harmful behaviours of autism. This research focuses on the hardware and software development of a low cost microcontroller-based stress detection system prototype. The prototype was designed using Arduino Mega platform and tested with 35 clinical patients. The data from two sensors is fed to the microcontroller using its two analog input pins and the sensor data is sent to the fuzzy logic module which is pre-programmed into the microcontroller for further processing. The output of the prototype is displayed on the LCD module connected to five digital pins of the microcontroller. In addition, three LEDs are connected to three digital pins of the microcontroller which light up in accordance with the stress levels. In order to test the developed system, an experiment was designed which requires subjects to perform mental calculations to solve arithmetic problems. The experiment involves three phases: low stress phase (P-1), medium stress phase (P-2) and high stress phase (P-3). The results showed that the prototype measures the stress levels with high degree of accuracy and efficiency. Apart from that, the results also highlighted that the stress neither depends on age nor gender

    Real-time human ambulation, activity, and physiological monitoring:taxonomy of issues, techniques, applications, challenges and limitations

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    Automated methods of real-time, unobtrusive, human ambulation, activity, and wellness monitoring and data analysis using various algorithmic techniques have been subjects of intense research. The general aim is to devise effective means of addressing the demands of assisted living, rehabilitation, and clinical observation and assessment through sensor-based monitoring. The research studies have resulted in a large amount of literature. This paper presents a holistic articulation of the research studies and offers comprehensive insights along four main axes: distribution of existing studies; monitoring device framework and sensor types; data collection, processing and analysis; and applications, limitations and challenges. The aim is to present a systematic and most complete study of literature in the area in order to identify research gaps and prioritize future research directions

    EDMON - Electronic Disease Surveillance and Monitoring Network: A Personalized Health Model-based Digital Infectious Disease Detection Mechanism using Self-Recorded Data from People with Type 1 Diabetes

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    Through time, we as a society have been tested with infectious disease outbreaks of different magnitude, which often pose major public health challenges. To mitigate the challenges, research endeavors have been focused on early detection mechanisms through identifying potential data sources, mode of data collection and transmission, case and outbreak detection methods. Driven by the ubiquitous nature of smartphones and wearables, the current endeavor is targeted towards individualizing the surveillance effort through a personalized health model, where the case detection is realized by exploiting self-collected physiological data from wearables and smartphones. This dissertation aims to demonstrate the concept of a personalized health model as a case detector for outbreak detection by utilizing self-recorded data from people with type 1 diabetes. The results have shown that infection onset triggers substantial deviations, i.e. prolonged hyperglycemia regardless of higher insulin injections and fewer carbohydrate consumptions. Per the findings, key parameters such as blood glucose level, insulin, carbohydrate, and insulin-to-carbohydrate ratio are found to carry high discriminative power. A personalized health model devised based on a one-class classifier and unsupervised method using selected parameters achieved promising detection performance. Experimental results show the superior performance of the one-class classifier and, models such as one-class support vector machine, k-nearest neighbor and, k-means achieved better performance. Further, the result also revealed the effect of input parameters, data granularity, and sample sizes on model performances. The presented results have practical significance for understanding the effect of infection episodes amongst people with type 1 diabetes, and the potential of a personalized health model in outbreak detection settings. The added benefit of the personalized health model concept introduced in this dissertation lies in its usefulness beyond the surveillance purpose, i.e. to devise decision support tools and learning platforms for the patient to manage infection-induced crises

    Contributions to physiological computing by means of automatic learning.

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    169 p.El trabajo presentado en esta tesis se enmarca dentro de dos áreas dentro de la computación fisiológica, que a su vez forma parte de las ciencias de la computación. La primera área trabajada corresponde a la de la detección de fenómenos psicológicos y estados mentales mediante la monitorización de las variables fisiológicas de las personas. La segunda área que se estudia en esta tesis forma parte del estudio de formas alternativas de interacción: los interfaces cerebro-computador.La primera contribución mejora un sistema de lógica difusa que, mediante la monitorización de las señales fisiológicas, es capaz de dar una estimación continuada en el tiempo del nivel del estrés mental. La segunda contribución continua con esta línea y estudia la detección de las respuestas fisiológicas del fenómeno opuesto al estrés: la relajación. En esta contribución se presentan características innovadoras que facilitan dicha detección y la pone en práctica con métodos de aprendizaje automático.Finalmente, la tercera contribución estudia diferentes técnicas de aprendizaje para distinguir entre cuatro clases de movimiento más una quinta clase de no intencionalidad de movimiento en un problema de BCI

    Fuzzy Modelling of Human Psycho-Physiological State and Fuzzy Adaptive Control of Automation in Human-Machine Interface

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    This research aims at proposing a new modelling and control framework that monitors the human operators' psychophysiological state in the human-machine interface to prevent performance breakdown. This research started with the exploration of new psychophysiological state assessment approaches to the adaptive modelling and control method for predicting human task performance and balancing the engagement of the human operator and the automatic system. The results of this research may also be further applied in developing advanced control mechanisms, investigating the origins of human compromised performance and identifying or even remedying operators' breakdown in the early stages of operation, at least. A summary of the current human psychophysiological studies, previous human-machine interface simulation and existing biomarkers for human psychophysiological state assessment was provided for simulation experiment design of this research. The use of newly developed facial temperature biomarkers for assessing the human psychophysiological state and the task performance was investigated. The research continued by exploring the uncertainty of the human-machine interface system through the use of the complex fuzzy logic based offline modelling approach. A new type-2 fuzzy-based modelling approach was then proposed to assess the human operators' psychophysiological states in the real-time human-machine interface. This new modelling technique integrated state tracking and type-2 fuzzy sets for updating the rule base with a Bayesian process. Finally, this research included a new type-2 fuzzy logic-based control algorithm for balancing the human-machine interface systems via adjusting the engagement of the human operators according to their psychophysiological state and task performance. This innovative control approach combined the state estimation of the human operator with the type-2 fuzzy sets to maintain the balance between the task requirements (i.e. difficulty level) and the human operator feasible effort (i.e. psychophysiological states). In addition, the research revealed the impacts of multi-tasking and general fatigue on human operator's performance

    Advanced Knowledge Application in Practice

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    The integration and interdependency of the world economy leads towards the creation of a global market that offers more opportunities, but is also more complex and competitive than ever before. Therefore widespread research activity is necessary if one is to remain successful on the market. This book is the result of research and development activities from a number of researchers worldwide, covering concrete fields of research
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