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Neural Implicit Surfaces in Higher Dimension

IEEE International Conference on Computer Vision (ICCV), 2022
Abstract

This work investigates the use of neural networks admitting high-order derivatives for modeling dynamic variations of smooth implicit surfaces. For this purpose, it extends the representation of differentiable neural implicit surfaces to higher dimensions, which opens up mechanisms that allow to exploit geometric transformations in many settings, from animation and surface evolution to shape morphing and design galleries. The problem is modeled by a kk-parameter family of surfaces ScS_c, specified as a neural network function f:R3×RkRf : \mathbb{R}^3 \times \mathbb{R}^k \rightarrow \mathbb{R}, where ScS_c is the zero-level set of the implicit function $f(\cdot, c) : \mathbb{R}^3 \rightarrow \mathbb{R} $, with cRkc \in \mathbb{R}^k, with variations induced by the control variable cc. In that context, restricted to each coordinate of Rk\mathbb{R}^k, the underlying representation is a neural homotopy which is the solution of a general partial differential equation.

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