SCPainter: A Unified Framework for Realistic 3D Asset Insertion and Novel View Synthesis
Paul Dobre, Jackson Cooper, Xin Wang, and Hongzhou Yang

TL;DR
SCPainter is a unified framework that combines 3D asset insertion and novel view synthesis to generate diverse, realistic driving scenes, improving autonomous driving data simulation.
Contribution
It introduces a novel integration of 3D Gaussian Splat assets with diffusion-based generation for joint asset insertion and view synthesis.
Findings
Enables realistic 3D asset insertion into scenes.
Supports high-quality novel view synthesis.
Facilitates diverse and realistic driving data creation.
Abstract
3D Asset insertion and novel view synthesis (NVS) are key components for autonomous driving simulation, enhancing the diversity of training data. With better training data that is diverse and covers a wide range of situations, including long-tailed driving scenarios, autonomous driving models can become more robust and safer. This motivates a unified simulation framework that can jointly handle realistic integration of inserted 3D assets and NVS. Recent 3D asset reconstruction methods enable reconstruction of dynamic actors from video, supporting their re-insertion into simulated driving scenes. While the overall structure and appearance can be accurate, it still struggles to capture the realism of 3D assets through lighting or shadows, particularly when inserted into scenes. In parallel, recent advances in NVS methods have demonstrated promising results in synthesizing viewpoints…
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Taxonomy
TopicsAdvanced Vision and Imaging · Computer Graphics and Visualization Techniques · Generative Adversarial Networks and Image Synthesis
