增强机器学习在虚拟环境中沉浸式情感识别的潜力

Abinaya M, V. G
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引用次数: 0

摘要

情绪识别是沉浸式技术面临的巨大挑战。为了检测用户的情绪,我们使用机器学习方法和技术来发挥虚拟环境的潜力,改善用户体验。情绪识别在增强现实(AR)和虚拟现实(VR)环境中开发逼真和情感沉浸式体验方面发挥着重要作用,它可以根据对用户情绪的准确检测和解读,即时调整交互、内容和视觉效果。沉浸式系统可以通过用于情感识别的各种机器学习算法和方法来增强用户体验,本文将对这些算法和方法进行研究。研究强调了利用机器学习(ML)技术将情感识别纳入沉浸式虚拟环境的新想法、挑战和潜在应用,以及利用 ML 方法定制强大沉浸式体验的好处,还讨论了未来通过架构建模识别用户情感识别的潜在进展,以及如何为虚拟环境增强 ML 技术。
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Enhancing the Potential of Machine Learning for Immersive Emotion Recognition in Virtual Environment
Emotion recognition is an immense challenge for immersive technology. In order to detect the emotions of the user, we use machine learning methods and techniques to use the potential of the Virtual Environment and to improve the user Experience. Emotion recognition plays an important role in developing realistic and emotionally immersive experiences in augmented reality (AR) and virtual reality (VR) settings by instantly adjusting interactions, content, and visuals based on the accurate detection and interpretation of users’ emotions. Immersive systems can enhance user experience through various machine learning algorithms and methods used for emotion recognition, which are examined in this article. Upon novel idea, challenges and potential applications of incorporating emotion recognition in immersive virtual environments with Machine Learning (ML) Techniques and the benefits of tailoring powerful immersive experiences with ML methods were highlighted, and also the study discusses potential advancements in identifying the user’s emotion recognition in the future by modeling an Architecture, as well as how the ML techniques were enhanced for virtual environment is discussed.
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