Elevating 5G Virtual Reality Projection Screen Platform with Smart Cities Innovation and Big Data Integration
Keywords:
Virtual reality, Smart cities, Big data integration, Projection screen platformAbstract
Smart cities' integration of 5G and VR projecting displays changes in city interactions while effortlessly incorporating massive amounts of data. Development may be done in real-time with the help of this convergence, which provides citizens with a rich data experience. This convergence transforms our urban environment and standard of life using 5G, VR, smart cities, and big data. This study focuses primarily on integrating smart cities innovation and big data with the application of elevating 5G virtual reality projection screen platform.A research project is underway to develop a city image system for three-dimensional virtual city modeling and simulation. This system includes several sections, including moving around, scene development, and information collecting. Important data formats include DXF and 3DS, obtained from digital stereo images. The data import/export module converts models into Openflight format. Model editing ansd reconstruction tools enhance spatial and attribute information storage. A scene roaming module selects models from a database to create interactive 3D city scenes. After implementing virtual reality technology, per capita urban humanities awareness increased to 62.1%. Test results validate the system's integration of geographic information systems, virtual reality, and database technology for effective three-dimensional digital city modeling and visualization, facilitating urban image dissemination.
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