Geo-NVS-w: Geometry-Aware Novel View Synthesis In-the-Wild with an SDF Renderer

Authors
A. Tsalakopoulos
A. Kanlis
E. Chatzis
A. Karakottas
D. Zarpalas
Year
2025
Venue
ICCV 2025 Workshop on Large Scale Cross Device Localization
Download

Abstract

We introduce Geo-NVS-w, a geometry-aware framework for high-fidelity novel view synthesis from unstructured, in-the-wild image collections. While existing in-the-wild methods already excel at novel view synthesis, they often lack geometric grounding on complex surfaces, sometimes producing results that contain inconsistencies. Geo-NVS-w addresses this limitation by leveraging an underlying geometric representation based on a Signed Distance Function (SDF) to guide the rendering process. This is complemented by a novel Geometry-Preservation Loss which ensures that fine structural details are preserved. Our framework achieves competitive rendering performance, while demonstrating a 4-5x reduction in energy consumption compared to similar methods. We demonstrate that Geo-NVS-w is a robust method for in-the-wild NVS, yielding photorealistic results with sharp, geometrically coherent details.