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NU-NeRF: Neural Reconstruction of Nested Transparent Objects with Uncontrolled Capture Environment

Published: 19 November 2024 Publication History

Abstract

The geometry reconstruction of transparent objects is a challenging problem due to the highly noncontinuous and rapidly changing surface color caused by refraction. Existing methods rely on special capture devices, dedicated backgrounds, or ground-truth object masks to provide more priors and reduce the ambiguity of the problem. However, it is hard to apply methods with these special requirements to real-life reconstruction tasks, like scenes captured in the wild using mobile devices. Moreover, these methods can only cope with solid and homogeneous materials, greatly limiting the scope of the application. To solve the problems above, we propose NU-NeRF to reconstruct nested transparent objects without requiring a dedicated capture environment or additional input. NU-NeRF is built upon a neural signed distance field formulation and leverages neural rendering techniques. It consists of two main stages. In Stage I, the surface color is separated into reflection and refraction. The reflection is decomposed using physically based material and rendering. The refraction is modeled using a single MLP given the refraction and view directions, which is a simple yet effective solution of refraction modeling. This step produces high-fidelity geometry of the outer surface. In stage II, we use explicit ray tracing on the reconstructed outer surface for accurate light transport simulation. The surface reconstruction is executed again inside the outer geometry to obtain any inner surface geometry. In this process, a novel transparent interface formulation is used to cope with different types of transparent surfaces. Experiments conducted on synthetic scenes and real captured scenes show that NU-NeRF is capable of producing better reconstruction results than previous methods and achieves accurate nested surface reconstruction under an uncontrolled capture environment.

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  • (2024)ScenePhotographer: Object-Oriented Photography for Residential ScenesProceedings of the 32nd ACM International Conference on Multimedia10.1145/3664647.3680942(7843-7851)Online publication date: 28-Oct-2024

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    cover image ACM Transactions on Graphics
    ACM Transactions on Graphics  Volume 43, Issue 6
    December 2024
    1828 pages
    EISSN:1557-7368
    DOI:10.1145/3702969
    Issue’s Table of Contents
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    Publication History

    Published: 19 November 2024
    Published in TOG Volume 43, Issue 6

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    Author Tags

    1. neural radiance fields
    2. transparent object
    3. reconstruction

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    • (2024)ScenePhotographer: Object-Oriented Photography for Residential ScenesProceedings of the 32nd ACM International Conference on Multimedia10.1145/3664647.3680942(7843-7851)Online publication date: 28-Oct-2024

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