학술논문

An Effective 3D Text Recurrent Voting Generator for Metaverse
Document Type
Periodical
Source
IEEE Transactions on Affective Computing IEEE Trans. Affective Comput. Affective Computing, IEEE Transactions on. 14(3):1766-1778 Sep, 2023
Subject
Computing and Processing
Robotics and Control Systems
Signal Processing and Analysis
Three-dimensional displays
Metaverse
Solid modeling
Analytical models
Sentiment analysis
Random forests
Motion pictures
Computational linguistics
RVG
reactive metaverse
generator
sentiment analysis
Language
ISSN
1949-3045
2371-9850
Abstract
Metaverse is a novel innovative platform that connects users worldwide in the distributed virtual environment. People share their interests, opinions, and resources on this virtual reality platform. With this, we come to know that besides other fundamental techniques, the language generation method is also a necessity to regulate the VR environment. There are several types of language generation methods in 3D, including neural learning, such as GRU, RNN, and GPT-3, and transfer learning. This paper proposes a recurrent voting generator (RVG) system that understands the 3D text of a book and performs emotional analytics within a metaverse space. The proposed model RVG evaluates emotions through three algorithms such as the first module is a recurrent sentiment generator (RSG) that analyzes emotions and calculates and generates the distributions. The second module is the sentiment decomposition (SD) that optimizes higher dimensions in Big Data. And, the third module is the compound voting learning (CVL) module that performs calculations with an emphasis on optimal performance. The dataset used to evaluate RVG is based on the content of movie reviews and books. The performance evaluation shows that the proposed approach outperforms better compared to the existing 2D RNN models in the metaverse.