Skip to yearly menu bar Skip to main content


Poster

Neural Poisson Solver: A Universal and Continuous Framework for Natural Signal Blending

Delong Wu · Hao Zhu · Qi Zhang · You Li · Xun Cao · Zhan Ma

# 306
Strong blind review: This paper was not made available on public preprint services during the review process Strong Double Blind
[ ] [ Project Page ] [ Paper PDF ]
[ Poster
Thu 3 Oct 7:30 a.m. PDT — 9:30 a.m. PDT

Abstract:

Implicit Neural Representation (INR) has become a popular method for representing visual signals (\eg, 2D images and 3D scenes), showing promising results in various downstream applications. Given its potential as a medium for visual signals, exploring the development of a neural blending method that utilizes INRs is a natural progression. Neural blending involves merging two INRs to create a new INR that encapsulates information from both original representations. A direct approach involves applying traditional image editing methods to the INR rendering process. However, this method often results in blending distortions, artifacts, and color shifts, primarily due to the discretization of the underlying discrete pixel grid and the introduction of boundary conditions for solving variational problems. To tackle this issue, we introduce the Neural Poisson Solver, a plug-and-play and universally applicable framework across different signal dimensions for blending visual signals represented by INRs. Our Neural Poisson Solver offers a variational problem-solving approach based on the continuous Poisson equation, which has demonstrated exceptional performance across various domains. Specifically, we propose a gradient-guided neural solver to represent the solution process of the variational problem, refining the target signal to achieve natural blending results. We also develop a Poisson equation-based loss and optimization scheme to train our solver, ensuring it effectively blends the input INR scenes while preserving their inherent structure and semantic content. Our method's independence from additional prior knowledge allows for easy adaptation across different task categories, underscoring its remarkable versatility. Extensive experiments demonstrate our method's robust capabilities across various dimensions and blending tasks.

Chat is not available.