Publication | Closed Access
A data-driven reflectance model
601
Citations
26
References
2003
Year
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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