Bidirectional reflectance distribution function explained
The bidirectional reflectance distribution function (BRDF), symbol
, is a function of four real variables that defines how light from a source is reflected off an
opaque surface. It is employed in the
optics of real-world light, in
computer graphics algorithms, and in
computer vision algorithms. The function takes an incoming light direction,
, and outgoing direction,
(taken in a coordinate system where the
surface normal
lies along the
z-axis), and returns the ratio of reflected
radiance exiting along
to the
irradiance incident on the surface from direction
. Each direction
is itself
parameterized by azimuth angle
and
zenith angle
, therefore the BRDF as a whole is a function of 4 variables. The BRDF has units sr
−1, with
steradians (sr) being a unit of
solid angle.
Definition
The BRDF was first defined by Fred Nicodemus around 1965.[1] The definition is:
where
is
radiance, or
power per unit
solid-angle-in-the-direction-of-a-ray per unit
projected-area-perpendicular-to-the-ray,
is
irradiance, or power per unit
surface area, and
is the angle between
and the
surface normal,
. The index
indicates incident light, whereas the index
indicates reflected light.
The reason the function is defined as a quotient of two differentials and not directly as a quotient between the undifferentiated quantities, is because irradiating light other than
, which are of no interest for
, might illuminate the surface which would unintentionally affect
, whereas
is only affected by
.
Related functions
The Spatially Varying Bidirectional Reflectance Distribution Function (SVBRDF) is a 6-dimensional function,
, where
describes a 2D location over an object's surface.
The Bidirectional Texture Function (BTF) is appropriate for modeling non-flat surfaces, and has the same parameterization as the SVBRDF; however in contrast, the BTF includes non-local scattering effects like shadowing, masking, interreflections or subsurface scattering. The functions defined by the BTF at each point on the surface are thus called Apparent BRDFs.
The Bidirectional Surface Scattering Reflectance Distribution Function (BSSRDF), is a further generalized 8-dimensional function
in which light entering the surface may scatter internally and exit at another location.
In all these cases, the dependence on the wavelength of light has been ignored. In reality, the BRDF is wavelength dependent, and to account for effects such as iridescence or luminescence the dependence on wavelength must be made explicit:
fr(λi,\omegai,λr,\omegar)
. Note that in the typical case where all optical elements are
linear, the function will obey
fr(λi,\omegai,λr,\omegar)=0
except when
: that is, it will only emit light at wavelength equal to the incoming light. In this case it can be parameterized as
, with only one wavelength parameter.
Physically based BRDFs
Physically realistic BRDFs for reciprocal linear optics have additional properties,[2] including,
fr(\omegai,\omegar)=fr(\omegar,\omegai)
\forall\omegai,\int\Omegafr(\omegai,\omegar)\cos{\thetar
} d\omega_ \le 1
Applications
The BRDF is a fundamental radiometric concept, and accordingly is used in computer graphics for photorealistic rendering of synthetic scenes (see the rendering equation), as well as in computer vision for many inverse problems such as object recognition. BRDF has also been used for modeling light trapping in solar cells (e.g. using the OPTOS formalism) or low concentration solar photovoltaic systems.[3] [4]
In the context of satellite remote sensing, NASA uses a BRDF model to characterise surface reflectance anisotropy. For a given land area, the BRDF is established based on selected multiangular observations of surface reflectance. While single observations depend on view geometry and solar angle, the MODIS BRDF/Albedo product describes intrinsic surface properties in several spectral bands, at a resolution of 500 meters.[5] The BRDF/Albedo product can be used to model surface albedo depending on atmospheric scattering.
Models
BRDFs can be measured directly from real objects using calibrated cameras and lightsources;[6] however, many phenomenological and analytic models have been proposed including the Lambertian reflectance model frequently assumed in computer graphics. Some useful features of recent models include:
W. Matusik et al. found that interpolating between measured samples produced realistic results and was easy to understand.[7]
Some examples
- Lambertian model, representing perfectly diffuse (matte) surfaces by a constant BRDF.
- Lommel–Seeliger, lunar and Martian reflection.
- Hapke scattering model, physically motivated approximation of the radiative transfer solution for a porous, irregular, and particulate surface. Often used in astronomy for planet/small body surface reflection simulations. Multiple versions and modifications exist.[8] [9]
- Phong reflectance model, a phenomenological model akin to plastic-like specularity.[10]
- Blinn–Phong model, resembling Phong, but allowing for certain quantities to be interpolated, reducing computational overhead.[11]
- Torrance–Sparrow model, a general model representing surfaces as distributions of perfectly specular microfacets.[12]
- Cook–Torrance model, a specular-microfacet model (Torrance–Sparrow) accounting for wavelength and thus color shifting.[13]
- Ward model, a specular-microfacet model with an elliptical-Gaussian distribution function dependent on surface tangent orientation (in addition to surface normal).[14]
- Oren–Nayar model, a "directed-diffuse" microfacet model, with perfectly diffuse (rather than specular) microfacets.[15]
- Ashikhmin–Shirley model, allowing for anisotropic reflectance, along with a diffuse substrate under a specular surface.[16]
- HTSG (He, Torrance, Sillion, Greenberg), a comprehensive physically based model.[17]
- Fitted Lafortune model, a generalization of Phong with multiple specular lobes, and intended for parametric fits of measured data.[18]
- Lebedev model for analytical-grid BRDF approximation.[19]
- ABg model[20] [21]
- K-correlation (ABC) model[22]
Acquisition
Traditionally, BRDF measurement devices called gonioreflectometers employ one or more goniometric arms to position a light source and a detector at various directions from a flat sample of the material to be measured. To measure a full BRDF, this process must be repeated many times, moving the light source each time to measure a different incidence angle.[23] Unfortunately, using such a device to densely measure the BRDF is very time-consuming. One of the first improvements on these techniques used a half-silvered mirror and a digital camera to take many BRDF samples of a planar target at once. Since this work, many researchers have developed other devices for efficiently acquiring BRDFs from real world samples, and it remains an active area of research.
There is an alternative way to measure BRDF based on HDR images. The standard algorithm is to measure the BRDF point cloud from images and optimize it by one of the BRDF models.[24]
A fast way to measure BRDF or BTDF is a conoscopic scatterometer [25] The advantage of this measurement instrument is that a near-hemispheric measurement can be captured in a fraction of a second with resolution of roughly 0.1°. This instrument has two disadvantages. The first is that the dynamic range is limited by the camera being used; this can be as low as 8 bits for older image sensors or as high as 32 bits for the newer automotive image sensors. The other disadvantage is that for BRDF measurements the beam must pass from an external light source, bounce off a pellicle and pass in reverse through the first few elements of the conoscope before being scattered by the sample. Each of these elements is antireflection-coated, but roughly 0.3% of the light is reflected at each air-glass interface. These reflections will show up in the image as a spurious signal. For scattering surfaces with a large signal, this is not a problem, but for Lambertian surfaces it is.
BRDF fabrication
BRDF fabrication refers to the process of implementing a surface based on the measured or synthesized information of a target BRDF. There exist three ways to perform such a task, but in general, it can be summarized as the following steps:
- Measuring or synthesizing the target BRDF distribution.
- Sample this distribution to discretize it and make the fabrication feasible.
- Design a geometry that produces this distribution (with microfacet, halftoning).
- Optimize the continuity and smoothness of the surface with respect to the manufacturing procedure.
Many approaches have been proposed for manufacturing the BRDF of the target :
- Milling the BRDF: This procedure starts with sampling the BRDF distribution and generating it with microfacet geometry then the surfaced is optimized in terms of smoothness and continuity to meet the limitations of the milling machine. The final BRDF distribution is the convolution of the substrate and the geometry of the milled surface.[26]
- Printing the BRDF: In order to generate spatially varying BRDF (svBRDF) it has been proposed to use gamut mapping and halftoning to achieve the targeted BRDF. Given a set of metallic inks with known BRDF an algorithm proposed to linearly combine them to produce the targeted distribution. So far printing only means gray-scale or color printing but real-world surfaces can exhibit different amounts of specularity that affects their final appearance, as a result this novel method can help us print images even more realistically. [27]
- Combination of Ink and Geometry: In addition to color and specularity, real-world objects also contain texture. A 3D printer can be used to manufacture the geometry and cover the surface with a suitable ink; by optimally creating the facets and choosing the ink combination, this method can give us a higher degree of freedom in design and more accurate BRDF fabrication.[28]
See also
References
- 4. 7. 767–775. Nicodemus. Fred. Directional reflectance and emissivity of an opaque surface. Applied Optics. 10.1364/AO.4.000767. 1965. 1965ApOpt...4..767N .
- Bernardt . Duvenhage . Numerical verification of bidirectional reflectance distribution functions for physical plausibility . Proceedings of the South African Institute for Computer Scientists and Information Technologists Conference . 200–208 . 2013 .
- Book: 10.1109/PVSC.2013.6744136. Photovoltaic system performance enhancement with non-tracking planar concentrators: Experimental results and BDRF based modelling. 2013 IEEE 39th Photovoltaic Specialists Conference (PVSC). 0229–0234. 2013. Andrews. Rob W.. Pollard. Andrew. Pearce. Joshua M.. 978-1-4799-3299-3. 32127698. https://hal.archives-ouvertes.fr/hal-02113584/file/Photovoltaic_System_Performance_Enhancem.pdf.
- Photovoltaic System Performance Enhancement with Nontracking Planar Concentrators: Experimental Results and Bidirectional Reflectance Function (BDRF)-Based Modeling . 10.1109/JPHOTOV.2015.2478064. 2015 . Andrews . Rob W. . Pollard . Andrew . Pearce . Joshua M. . IEEE Journal of Photovoltaics . 5 . 6 . 1626–1635 . 40828010 .
- Web site: BRDF/Albedo. NASA, Goddard Space Flight Center. March 9, 2017.
- Web site: Rusinkiewicz, S. . A Survey of BRDF Representation for Computer Graphics . 2007-09-05 .
- Wojciech Matusik, Hanspeter Pfister, Matt Brand, and Leonard McMillan. A Data-Driven Reflectance Model . ACM Transactions on Graphics. 22(3) 2002.
- Book: Hapke, Bruce . Theory of Reflectance and Emittance Spectroscopy . Cambridge University Press . 2 . 2012 . 323 . 10.1017/CBO9781139025683 . 2012tres.book.....H . 978-0-521-88349-8 .
- Web site: Fundamentals of the Planetary Spectrum Generator .
- B. T. . Phong . Illumination for computer generated pictures . Communications of the ACM . 18 . 1975 . 6 . 311–317 . 10.1145/360825.360839 . 1439868 . free .
- Book: 11 . 2 . James F. Blinn . Proceedings of the 4th annual conference on Computer graphics and interactive techniques . Models of light reflection for computer synthesized pictures . 1977 . 10.1145/563858.563893 . 192–198. 9781450373555 . 8043767 .
- K. . Torrance . E. . Sparrow . Theory for Off-Specular Reflection from Roughened Surfaces . Journal of the Optical Society of America. 57 . 1967 . 9 . 1105–1114 . 10.1364/JOSA.57.001105 . 1967JOSA...57.1105T .
- R. . Cook . K. . Torrance . A reflectance model for computer graphics . ACM SIGGRAPH Computer Graphics. 15 . 3 . 1981 . 301–316 . 10.1145/965161.806819 . free .
- Ward. Gregory J.. 1992. Measuring and modeling anisotropic reflection. 265–272. 10.1145/133994.134078. Proceedings of SIGGRAPH.
- S. K. . Nayar . M. . Oren . Generalization of the Lambertian Model and Implications for Machine Vision . International Journal of Computer Vision . 14 . 3 . 227–251 . 1995 . 10.1007/BF01679684 . 2367943 .
- Michael . Ashikhmin . Peter Shirley . Peter . Shirley . An Anisotropic Phong BRDF Model . Journal of Graphics Tools . 2000 . 5 . 2 . 25–32 . 10.1080/10867651.2000.10487522 . 18520447 .
- X. He, K. Torrance, F. Sillon, and D. Greenberg, A comprehensive physical model for light reflection, Computer Graphics 25 (1991), no. Annual Conference Series, 175–186.
- E. Lafortune, S. Foo, K. Torrance, and D. Greenberg, Non-linear approximation of reflectance functions. In Turner Whitted, editor, SIGGRAPH 97 Conference Proceedings, Annual Conference Series, pp. 117–126. ACM SIGGRAPH, Addison Wesley, August 1997.
- Ilyin A., Lebedev A., Sinyavsky V., Ignatenko, A., Image-based modelling of material reflective properties of flat objects (In Russian) . In: GraphiCon'2009.; 2009. p. 198-201.
- Richard N. Pfisterer, Approximated Scatter Models for Stray Light Analysis
- Yonghee . Won . A Study of Scattering Characteristics for Microscale Rough Surface . 2014 . Rose-Hulman Institute of Technology . Master's thesis .
- Church E., Takacs P., Leonard T., The prediction of BSDFs from surface profile measurements
- Marschner S.R., Westin S.H., Lafortune E.P.F., Torrance K.E., Greenberg D.P. (1999) Image-Based BRDF Measurement Including Human Skin. In: Lischinski D., Larson G.W. (eds) Rendering Techniques’ 99. Eurographics. Springer, Vienna
- http://lebedev.as/index.php?p=1_7_BRDFRecon BRDFRecon project
- Eckhardt S, Lunda K., Digital Age Sees New Demand for the Venerable Conoscope https://www.photonicsspectra-digital.com/photonicsspectra/september 2020/MobilePagedReplica.action?pm=2&folio=56
- Book: Weyrich. Tim. Peers. Pieter. Matusik. Wojciech. Rusinkiewicz. Szymon . ACM SIGGRAPH 2009 papers . Fabricating microgeometry for custom surface reflectance . 2009 . 1–6. New York, New York, USA. ACM Press. 10.1145/1576246.1531338. 9781605587264. 13932018.
- Matusik. Wojciech. Ajdin. Boris. Gu. Jinwei. Lawrence. Jason. Lensch. Hendrik P. A.. Pellacini. Fabio. Rusinkiewicz. Szymon. 2009-12-01. Printing spatially-varying reflectance. ACM Transactions on Graphics. en. 28. 5. 1–9. 10.1145/1618452.1618474.
- Lan. Yanxiang. Dong. Yue. Pellacini. Fabio. Tong. Xin. 2013-07-01. Bi-scale appearance fabrication. ACM Transactions on Graphics. 32. 4. 1–12. 10.1145/2461912.2461989. 4960068. 0730-0301.
Further reading
- Book: Lubin
, Dan
. 1st. Springer. 978-3-540-43097-1. Robert Massom. Polar Remote Sensing. Volume I: Atmosphere and Oceans. 2006-02-10. 756.
- Book: Matt
, Pharr
. 1st. Morgan Kaufmann. 978-0-12-553180-1. Greg Humphreys. Physically Based Rendering. 2004. 1019.
- 103. 1. 27–42. Schaepman-Strub. G.. M. E. Schaepman . T. H. Painter . S. Dangel . J. V. Martonchik . Reflectance quantities in optical remote sensing: definitions and case studies. Remote Sensing of Environment. 2006-07-15. 10.1016/j.rse.2006.03.002. 2006RSEnv.103...27S .
- An intuitive introduction to the concept of reflection model and BRDF.