Abstract

Physiological sensors can be used to detect changes in the emotional state of users with affective computing. This has lately been applied in the educational domain, aimed to better support learners during the learning process. For this purpose, we have developed the AICARP (Ambient Intelligence Context-aware Affective Recommender Platform) infrastructure, which detects changes in the emotional state of the user and provides personalized multisensorial support to help manage the emotional state by taking advantage of ambient intelligence features. We have developed a third version of this infrastructure, AICARP.V3, which addresses several problems detected in the data acquisition stage of the second version, (i.e., intrusion of the pulse sensor, poor resolution and low signal to noise ratio in the galvanic skin response sensor and slow response time of the temperature sensor) and extends the capabilities to integrate new actuators. This improved incorporates a new acquisition platform (shield) called PhyAS (Physiological Acquisition Shield), which reduces the number of control units to only one, and supports both gathering physiological signals with better precision and delivering multisensory feedback with more flexibility, by means of new actuators that can be added/discarded on top of just that single shield. The improvements in the quality of the acquired signals allow better recognition of the emotional states. Thereof, AICARP.V3 gives a more accurate personalized emotional support to the user, based on a rule-based approach that triggers multisensorial feedback, if necessary. This represents progress in solving an open problem: develop systems that perform as effectively as a human expert in a complex task such as the recognition of emotional states.

Highlights

  • Affective computing focuses on detecting emotional reactions and applying this information to help people properly manage their emotions [1]

  • Quality of the physiological signals recorded, we describe the control unit and the physiological integrated into a wristband

  • First, we needed to check if the new acquisition shield (i.e., PhyAS) obtained physiological signals with better quality than the previous previous approach (PeH)

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Summary

Introduction

Affective computing focuses on detecting emotional reactions and applying this information to help people properly manage their emotions [1]. Some factors affect the value of the information obtained from different sources: the validity of the signal as a natural way to identify an affective state; the reliability of the signals in real-world environments; the time resolution of the signal as it relates to the specific needs of the application; and the cost and intrusiveness for the user. These issues are to be considered in the sensor selection and system design [8]. Related studies have shown sensors that were used to measure stress in everyday activities, which involves non-invasive sensors, optimal sensor fusion, and automatic data analysis for stress recognition and classification [12,13,14,15]

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