rpcPRF: Generalizable MPI Neural Radiance Field for Satellite Camera
Tongtong Zhang, Yuanxiang Li

TL;DR
rpcPRF introduces a generalizable neural radiance field model tailored for satellite camera images, capable of effective novel view synthesis from limited inputs and unseen scenes, outperforming existing methods in fidelity and efficiency.
Contribution
The paper presents rpcPRF, a novel MPI-based neural radiance field model that generalizes across scenes and reduces depth supervision requirements for satellite images.
Findings
Outperforms state-of-the-art methods on TLC and SatMVS3D datasets.
Effective with single or few input views.
Achieves higher image fidelity and reconstruction accuracy.
Abstract
Novel view synthesis of satellite images holds a wide range of practical applications. While recent advances in the Neural Radiance Field have predominantly targeted pin-hole cameras, and models for satellite cameras often demand sufficient input views. This paper presents rpcPRF, a Multiplane Images (MPI) based Planar neural Radiance Field for Rational Polynomial Camera (RPC). Unlike coordinate-based neural radiance fields in need of sufficient views of one scene, our model is applicable to single or few inputs and performs well on images from unseen scenes. To enable generalization across scenes, we propose to use reprojection supervision to induce the predicted MPI to learn the correct geometry between the 3D coordinates and the images. Moreover, we remove the stringent requirement of dense depth supervision from deep multiview-stereo-based methods by introducing rendering techniques…
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Taxonomy
TopicsAdvanced Vision and Imaging · Robotics and Sensor-Based Localization · Advanced Neural Network Applications
MethodsTest-time Local Converter
