2024
DOI: 10.1609/aaai.v38i12.29285
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Spiking NeRF: Representing the Real-World Geometry by a Discontinuous Representation

Zhanfeng Liao,
Yan Liu,
Qian Zheng
et al.

Abstract: A crucial reason for the success of existing NeRF-based methods is to build a neural density field for the geometry representation via multiple perceptron layers (MLPs). MLPs are continuous functions, however, real geometry or density field is frequently discontinuous at the interface between the air and the surface. Such a contrary brings the problem of unfaithful geometry representation. To this end, this paper proposes spiking NeRF, which leverages spiking neurons and a hybrid Artificial Neural Network (ANN… Show more

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