FSH3D: 3D Representation via Fibonacci Spherical Harmonics
Computer Graphics Forum 2024 Spherical harmonics are a favorable technique for 3D representation, employing a frequency-based approach through the spherical harmonic transform (SHT). Typically, SHT is performed using equiangular sampling grids. However, these grids are non-uniform on spherical surfa...
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Zusammenfassung: | Computer Graphics Forum 2024 Spherical harmonics are a favorable technique for 3D representation,
employing a frequency-based approach through the spherical harmonic transform
(SHT). Typically, SHT is performed using equiangular sampling grids. However,
these grids are non-uniform on spherical surfaces and exhibit local anisotropy,
a common limitation in existing spherical harmonic decomposition methods. This
paper proposes a 3D representation method using Fibonacci Spherical Harmonics
(FSH3D). We introduce a spherical Fibonacci grid (SFG), which is more uniform
than equiangular grids for SHT in the frequency domain. Our method employs
analytical weights for SHT on SFG, effectively assigning sampling errors to
spherical harmonic degrees higher than the recovered band-limited function.
This provides a novel solution for spherical harmonic transformation on
non-equiangular grids. The key advantages of our FSH3D method include: 1) With
the same number of sampling points, SFG captures more features without bias
compared to equiangular grids; 2) The root mean square error of 32-degree
spherical harmonic coefficients is reduced by approximately 34.6% for SFG
compared to equiangular grids; and 3) FSH3D offers more stable frequency domain
representations, especially for rotating functions. FSH3D enhances the
stability of frequency domain representations under rotational transformations.
Its application in 3D shape reconstruction and 3D shape classification results
in more accurate and robust representations. Our code is publicly available at
https://github.com/Miraclelzk/Fibonacci-Spherical-Harmonics. |
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DOI: | 10.48550/arxiv.2406.08308 |