Publication | Closed Access
A data-driven reflectance model
594
Citations
46
References
2003
Year
Unknown Venue
Analytical Reflectance ModelsRealistic RenderingEngineeringIllumination ModelingImage AnalysisDifferentiable RenderingData ScienceGenerative ModelPhotometric StereoReflectanceReflectance ModelingGeometric ModelingMachine VisionReflectance DataInverse ProblemsMedical Image ComputingVolume RenderingComputer VisionBiomedical ImagingRemote SensingData-driven Reflectance Model
We present a generative model for isotropic bidirectional reflectance distribution functions (BRDFs) based on acquired reflectance data. Instead of using analytical reflectance models, we represent each BRDF as a dense set of measurements. This allows us to interpolate and extrapolate in the space of acquired BRDFs to create new BRDFs. We treat each acquired BRDF as a single high-dimensional vector taken from a space of all possible BRDFs. We apply both linear (subspace) and non-linear (manifold) dimensionality reduction tools in an effort to discover a lower-dimensional representation that characterizes our measurements. We let users define perceptually meaningful parametrization directions to navigate in the reduced-dimension BRDF space. On the low-dimensional manifold, movement along these directions produces novel but valid BRDFs.
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