NeRFs are Mirror Detectors: Using Structural Similarity for Multi-View Mirror Scene Reconstruction with 3D Surface Primitives
While neural radiance fields (NeRF) led to a breakthrough in photorealistic novel view synthesis, handling mirroring surfaces still denotes a particular challenge as they introduce severe inconsistencies in the scene representation. Previous attempts either focus on reconstructing single reflective...
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Zusammenfassung: | While neural radiance fields (NeRF) led to a breakthrough in photorealistic
novel view synthesis, handling mirroring surfaces still denotes a particular
challenge as they introduce severe inconsistencies in the scene representation.
Previous attempts either focus on reconstructing single reflective objects or
rely on strong supervision guidance in terms of additional user-provided
annotations of visible image regions of the mirrors, thereby limiting the
practical usability. In contrast, in this paper, we present NeRF-MD, a method
which shows that NeRFs can be considered as mirror detectors and which is
capable of reconstructing neural radiance fields of scenes containing mirroring
surfaces without the need for prior annotations. To this end, we first compute
an initial estimate of the scene geometry by training a standard NeRF using a
depth reprojection loss. Our key insight lies in the fact that parts of the
scene corresponding to a mirroring surface will still exhibit a significant
photometric inconsistency, whereas the remaining parts are already
reconstructed in a plausible manner. This allows us to detect mirror surfaces
by fitting geometric primitives to such inconsistent regions in this initial
stage of the training. Using this information, we then jointly optimize the
radiance field and mirror geometry in a second training stage to refine their
quality. We demonstrate the capability of our method to allow the faithful
detection of mirrors in the scene as well as the reconstruction of a single
consistent scene representation, and demonstrate its potential in comparison to
baseline and mirror-aware approaches. |
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DOI: | 10.48550/arxiv.2501.04074 |