Generative Augmented Reality: Paradigms, Technologies, and Future Applications
By: Chen Liang , Jiawen Zheng , Yufeng Zeng and more
Potential Business Impact:
Creates virtual worlds that look and feel real.
This paper introduces Generative Augmented Reality (GAR) as a next-generation paradigm that reframes augmentation as a process of world re-synthesis rather than world composition by a conventional AR engine. GAR replaces the conventional AR engine's multi-stage modules with a unified generative backbone, where environmental sensing, virtual content, and interaction signals are jointly encoded as conditioning inputs for continuous video generation. We formalize the computational correspondence between AR and GAR, survey the technical foundations that make real-time generative augmentation feasible, and outline prospective applications that leverage its unified inference model. We envision GAR as a future AR paradigm that delivers high-fidelity experiences in terms of realism, interactivity, and immersion, while eliciting new research challenges on technologies, content ecosystems, and the ethical and societal implications.
Similar Papers
When Generative Artificial Intelligence meets Extended Reality: A Systematic Review
Human-Computer Interaction
AI makes virtual worlds more real and interactive.
Beyond Reality: Designing Personal Experiences and Interactive Narratives in AR Theater
Human-Computer Interaction
Lets you watch plays anywhere, anytime, like a game.
Augmenting Human Cognition through Everyday AR
Human-Computer Interaction
Augmented reality becomes a smart helper for tasks.