Transcending Dimensions using Generative AI: Real-Time 3D Model Generation in Augmented Reality
By: Majid Behravan, Maryam Haghani, Denis Gracanin
Potential Business Impact:
Makes 3D models from pictures in AR.
Traditional 3D modeling requires technical expertise, specialized software, and time-intensive processes, making it inaccessible for many users. Our research aims to lower these barriers by combining generative AI and augmented reality (AR) into a cohesive system that allows users to easily generate, manipulate, and interact with 3D models in real time, directly within AR environments. Utilizing cutting-edge AI models like Shap-E, we address the complex challenges of transforming 2D images into 3D representations in AR environments. Key challenges such as object isolation, handling intricate backgrounds, and achieving seamless user interaction are tackled through advanced object detection methods, such as Mask R-CNN. Evaluation results from 35 participants reveal an overall System Usability Scale (SUS) score of 69.64, with participants who engaged with AR/VR technologies more frequently rating the system significantly higher, at 80.71. This research is particularly relevant for applications in gaming, education, and AR-based e-commerce, offering intuitive, model creation for users without specialized skills.
Similar Papers
From Voices to Worlds: Developing an AI-Powered Framework for 3D Object Generation in Augmented Reality
Human-Computer Interaction
Creates 3D objects from your voice for games.
Generative Augmented Reality: Paradigms, Technologies, and Future Applications
Human-Computer Interaction
Creates virtual worlds that look and feel real.
AI-powered Contextual 3D Environment Generation: A Systematic Review
Graphics
AI builds realistic 3D worlds from text descriptions.