162 research outputs found
Polarized 3D: High-Quality Depth Sensing with Polarization Cues
Coarse depth maps can be enhanced by using the shape information from polarization cues. We propose a framework to combine surface normals from polarization (hereafter polarization normals) with an aligned depth map. Polarization normals have not been used for depth enhancement before. This is because polarization normals suffer from physics-based artifacts, such as azimuthal ambiguity, refractive distortion and fronto-parallel signal degradation. We propose a framework to overcome these key challenges, allowing the benefits of polarization to be used to enhance depth maps. Our results demonstrate improvement with respect to state-of-the-art 3D reconstruction techniques.Charles Stark Draper Laboratory (Doctoral Fellowship)Singapore. Ministry of Education (Academic Research Foundation MOE2013-T2-1-159)Singapore. National Research Foundation (Singapore University of Technology and Design
Pano-NeRF: Synthesizing High Dynamic Range Novel Views with Geometry from Sparse Low Dynamic Range Panoramic Images
Panoramic imaging research on geometry recovery and High Dynamic Range (HDR)
reconstruction becomes a trend with the development of Extended Reality (XR).
Neural Radiance Fields (NeRF) provide a promising scene representation for both
tasks without requiring extensive prior data. However, in the case of inputting
sparse Low Dynamic Range (LDR) panoramic images, NeRF often degrades with
under-constrained geometry and is unable to reconstruct HDR radiance from LDR
inputs. We observe that the radiance from each pixel in panoramic images can be
modeled as both a signal to convey scene lighting information and a light
source to illuminate other pixels. Hence, we propose the irradiance fields from
sparse LDR panoramic images, which increases the observation counts for
faithful geometry recovery and leverages the irradiance-radiance attenuation
for HDR reconstruction. Extensive experiments demonstrate that the irradiance
fields outperform state-of-the-art methods on both geometry recovery and HDR
reconstruction and validate their effectiveness. Furthermore, we show a
promising byproduct of spatially-varying lighting estimation. The code is
available at https://github.com/Lu-Zhan/Pano-NeRF
NeuralMPS: Non-Lambertian Multispectral Photometric Stereo via Spectral Reflectance Decomposition
Multispectral photometric stereo(MPS) aims at recovering the surface normal
of a scene from a single-shot multispectral image captured under multispectral
illuminations. Existing MPS methods adopt the Lambertian reflectance model to
make the problem tractable, but it greatly limits their application to
real-world surfaces. In this paper, we propose a deep neural network named
NeuralMPS to solve the MPS problem under general non-Lambertian spectral
reflectances. Specifically, we present a spectral reflectance
decomposition(SRD) model to disentangle the spectral reflectance into geometric
components and spectral components. With this decomposition, we show that the
MPS problem for surfaces with a uniform material is equivalent to the
conventional photometric stereo(CPS) with unknown light intensities. In this
way, NeuralMPS reduces the difficulty of the non-Lambertian MPS problem by
leveraging the well-studied non-Lambertian CPS methods. Experiments on both
synthetic and real-world scenes demonstrate the effectiveness of our method
Language-guided Image Reflection Separation
This paper studies the problem of language-guided reflection separation,
which aims at addressing the ill-posed reflection separation problem by
introducing language descriptions to provide layer content. We propose a
unified framework to solve this problem, which leverages the cross-attention
mechanism with contrastive learning strategies to construct the correspondence
between language descriptions and image layers. A gated network design and a
randomized training strategy are employed to tackle the recognizable layer
ambiguity. The effectiveness of the proposed method is validated by the
significant performance advantage over existing reflection separation methods
on both quantitative and qualitative comparisons
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