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We introduce k-planes, a white-box model for radiance fields in arbitrary dimensions. Our model uses planes to represent a d-dimensional scene, providing a seamless way to go from static (d = 3) to dynamic (d= 4) scenes. This planar factorization makes adding dimension-specific priors easy, e.g. temporal smoothness and multi-resolution spatial structure, and induces a natural decomposition of static and dynamic components of a scene. We use a linear feature decoder with a learned color basis that yields similar performance as a nonlinear black-box MLP decoder. Across a range of synthetic and real, static and dynamic, fixed and varying appearance scenes, k-planes yields competitive and often state-of-the-art recon- struction fidelity with low memory usage, achieving 1000x compression over a full 4D grid, and fast optimization with a pure PyTorch implementation. For video results and code, please see sarafridov.github.io/K-Planes.
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Sara Fridovich-Keil
Giacomo Meanti
Frederik Warburg
University of California, Berkeley
Technical University of Denmark
Berkeley College
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Fridovich-Keil et al. (Thu,) studied this question.
www.synapsesocial.com/papers/69c8bdf89b39906d61a2e1b6 — DOI: https://doi.org/10.1109/cvpr52729.2023.01201