Emotion labels are usually obtained via either manual annotation, which is tedious and time-consuming, or questionnaires, which neglect the time-varying nature of emotions and depend on human's unreliable introspection. To overcome these limitations, we developed a continuous, real-time, joystick-based emotion annotation framework. To assess the same, 30 subjects each watched 8 emotion-inducing videos. They were asked to indicate their instantaneous emotional state in a valence-arousal (V-A) space, using a joystick. Subsequently, five analyses were undertaken: (i) a System Usability Scale (SUS) questionnaire unveiled the framework's excellent usability; (ii) MANOVA analysis of the mean V-A ratings and (iii) trajectory similarity analyses of...
The research field of affective computing aims to improve human-machine interaction. One of the main...
Abstract — Human emotional and cognitive states evolve with variable intensity and clarity through t...
We demonstrate an HMD-based annotation tool for collecting precise emotion ground truth labels while...
Emotion labels are usually obtained via either manual annotation, which is tedious and time-consumin...
From a computational viewpoint, emotions continue to be intriguingly hard to understand. In research...
The DLR (German Aerospace Center) aims to assess user’s affective state in motion simulators. To fac...
The DLR (German Aerospace Center) aims to assess user’s affective state in motion simulators. To fac...
The DLR (German Aerospace Center) aims to assess user’s affective state in motion simulators. To fac...
Ongoing research at the DLR (German Aerospace Center) aims to employ affective computing techniques ...
Collecting accurate and precise emotion ground truth labels for mobile video watching is essential f...
A smart environment designed to adapt to a user's affective state should be able to decipher unobtru...
Unobtrusive recognition of the user's mood is an essential capability for affect-adaptive systems. M...
Interactive human-computer systems can be enriched to interpret and respond to users’ affective stat...
Affect-adaptive systems are dependent on their ability to automatically recognize a user’s affective...
The research field of affective computing aims to improve human-machine interaction. One of the main...
Abstract — Human emotional and cognitive states evolve with variable intensity and clarity through t...
We demonstrate an HMD-based annotation tool for collecting precise emotion ground truth labels while...
Emotion labels are usually obtained via either manual annotation, which is tedious and time-consumin...
From a computational viewpoint, emotions continue to be intriguingly hard to understand. In research...
The DLR (German Aerospace Center) aims to assess user’s affective state in motion simulators. To fac...
The DLR (German Aerospace Center) aims to assess user’s affective state in motion simulators. To fac...
The DLR (German Aerospace Center) aims to assess user’s affective state in motion simulators. To fac...
Ongoing research at the DLR (German Aerospace Center) aims to employ affective computing techniques ...
Collecting accurate and precise emotion ground truth labels for mobile video watching is essential f...
A smart environment designed to adapt to a user's affective state should be able to decipher unobtru...
Unobtrusive recognition of the user's mood is an essential capability for affect-adaptive systems. M...
Interactive human-computer systems can be enriched to interpret and respond to users’ affective stat...
Affect-adaptive systems are dependent on their ability to automatically recognize a user’s affective...
The research field of affective computing aims to improve human-machine interaction. One of the main...
Abstract — Human emotional and cognitive states evolve with variable intensity and clarity through t...
We demonstrate an HMD-based annotation tool for collecting precise emotion ground truth labels while...