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GroomCap: High-Fidelity Prior-Free Hair Capture

Yuxiao Zhou, Menglei Chai, Daoye Wang, Sebastian Winberg, Erroll Wood, Kripasindhu Sarkar, Markus Groß, Thabo Beeler

2024ACM Transactions on Graphics20 citationsDOIOpen Access PDF

Abstract

Despite recent advances in multi-view hair reconstruction, achieving strand-level precision remains a significant challenge due to inherent limitations in existing capture pipelines. We introduce GroomCap , a novel multi-view hair capture method that reconstructs faithful and high-fidelity hair geometry without relying on external data priors. To address the limitations of conventional reconstruction algorithms, we propose a neural implicit representation for hair volume that encodes high-resolution 3D orientation and occupancy from input views. This implicit hair volume is trained with a new volumetric 3D orientation rendering algorithm, coupled with 2D orientation distribution supervision, to effectively prevent the loss of structural information caused by undesired orientation blending. We further propose a Gaussian-based hair optimization strategy to refine the traced hair strands with a novel chained Gaussian representation, utilizing direct photometric supervision from images. Our results demonstrate that GroomCap is able to capture high-quality hair geometries that are not only more precise and detailed than existing methods but also versatile enough for a range of applications.

Topics & Concepts

Rendering (computer graphics)Computer scienceHigh fidelityOrientation (vector space)FidelityArtificial intelligenceGaussianComputer visionPrior probabilityVolume renderingRepresentation (politics)AlgorithmMathematicsBayesian probabilityAcousticsQuantum mechanicsPolitical scienceLawPhysicsTelecommunicationsGeometryPoliticsComputer Graphics and Visualization TechniquesAdvanced Vision and Imaging3D Shape Modeling and Analysis
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