GAINS: Gaussian-based Inverse Rendering from Sparse Multi-View Captures

arXiv — cs.CVThursday, December 11, 2025 at 5:00:00 AM
  • GAINS, a new framework for Gaussian-based inverse rendering, has been introduced to enhance material recovery from sparse multi-view captures. This two-stage approach refines geometry and material estimation by utilizing learning-based priors, addressing the challenges posed by limited observations that often lead to ambiguity in geometry, reflectance, and lighting.
  • The development of GAINS is significant as it represents a substantial improvement in the accuracy of material parameters and relighting quality, which are crucial for applications in computer vision and graphics. This advancement could lead to more realistic rendering in various industries, including gaming and virtual reality.
  • This innovation aligns with ongoing efforts in the field of computer vision to improve scene recovery and material appearance transfer. The integration of Gaussian Splatting techniques with other methodologies, such as spatial and frequency priors, highlights a trend towards more sophisticated rendering solutions that can operate effectively under varying conditions, ultimately enhancing the realism and usability of digital content.
— via World Pulse Now AI Editorial System

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