This paper introduces BRDF-NeRF, a novel approach that combines neural radiance fields (NeRF) with the semi-empirical Rahman-Pinty-Verstraete (RPV) BRDF model to estimate the reflectance properties of natural surfaces from sparse satellite imagery.
The key highlights are:
BRDF-NeRF is designed to explicitly estimate the four parameters of the RPV BRDF model (ρ0, k, Θ, ρc), which can effectively represent the anisotropic reflectance of complex Earth surfaces.
BRDF-NeRF can generate high-quality novel views and digital surface models (DSMs) using only three or four satellite images for training, overcoming the limitations of previous NeRF-based approaches that require dozens of images.
The authors evaluate BRDF-NeRF on two satellite image datasets (Djibouti and Lanzhou) and show that it outperforms state-of-the-art NeRF-based methods in terms of novel view synthesis and altitude estimation.
The paper also examines the impact of atmospheric correction and explores different training strategies, depth loss weighting, and rendering approaches to optimize the performance of BRDF-NeRF.
Overall, this work demonstrates the potential of integrating physical BRDF models into neural radiance fields to enable accurate modelling of complex surface reflectance properties from sparse remote sensing data.
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arxiv.org
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