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EECS 274 Computer Vision

EECS 274 Computer Vision. Sources, Shadows, and Shading. Surface brightness. Depends on local surface properties (albedo), surface shape (normal), and illumination Shading model: a model of how brightness of a surface is obtained Can interpret pixel values to reconstruct its shape and albedo

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EECS 274 Computer Vision

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  1. EECS 274 Computer Vision Sources, Shadows, and Shading

  2. Surface brightness • Depends on local surface properties (albedo), surface shape (normal), and illumination • Shading model: a model of how brightness of a surface is obtained • Can interpret pixel values to reconstruct its shape and albedo • Reading: FP Chapter5, H Chapter 11

  3. Radiometric properties of sources • How bright (or what color) are objects? • One more definition: Exitance of a light source is • the internally generated power (not reflected) radiated per unit area on the radiating surface • Similar to radiosity: a source can have both • radiosity, because it reflects • exitance, because it emits • Independent of its exit angle • Internally generated energy radiated per unit time, per unit area • But what aspects of the incoming radiance will we model? • Point, line, area source • Simple geometry

  4. Radiosity due to a point sources • small, distant sphere radius e and exitance E, which is far away subtends solid angle Typo in figure, d  r

  5. Radiosity due to a point source • As r is increased, the rays leaving the surface patch and striking the sphere move closer evenly, and the collection changes only slightly, i.e., diffusive reflectance, or albedo • Radiosity due to source

  6. Nearby point source model • The angle term can be written in terms of N and S • N is the surface normal • ρd is diffuse albedo • S is source vector - a vector from P to the source, whose length is the intensity term, ε2E • works because a dot-product is basically a cosine

  7. Point source at infinity • Issue: nearby point source gets bigger if one gets closer • the sun doesn’t for any reasonable binding of closer • Assume that all points in the model are close to each other with respect to the distance to the source • Then the source vector doesn’t vary much, and the distance doesn’t vary much either, and we can roll the constants together to get:

  8. Line sources radiosity due to line source varies with inverse distance, if the source is long enough

  9. Area sources • Examples: diffuser boxes, white walls. • The radiosity at a point due to an area source is obtained by adding up the contribution over the section of view hemisphere subtended by the source • change variables and add up over the source

  10. Radiosity due to an area source • ρd is albedo • E is exitance • r is distance between points Q and P • Q is a coordinate on the source

  11. Shading models • Local shading model • Surface has radiosity due only to sources visible at each point • Advantages: • often easy to manipulate, expressions easy • supports quite simple theories of how shape information can be extracted from shading • Global shading model • Surface radiosity is due to radiance reflected from other surfaces as well as from surfaces • Advantages: • usually very accurate • Disadvantage: • extremely difficult to infer anything from shading values

  12. Local shading models • For point sources at infinity: • For point sources not at infinity

  13. Shadows cast by a point source • A point that can’t see the source is in shadow (self cast shadow) • For point sources, the geometry is simple

  14. Area source shadows • Are sources do not produce dark • shadows with crisp boundaries • Out of shadow • Penumbra (“almost shadow”) • Umbra (“shadow”)

  15. Photometric stereo • Assume: • A local shading model • A set of point sources that are infinitely distant • A set of pictures of an object, obtained in exactly the same camera/object configuration but using different sources • A Lambertian object (or the specular component has been identified and removed)

  16. Monge patch Projection model for surface recovery - Monge patch In computer vision, it is often known as height map , depth map, or dense depth map

  17. Image model • For each point source, we know the source vector (by assumption) • We assume we know the scaling constant of the linear camera (i.e., intensity value is linear in the surface radiosity) • Fold the normal and the reflectance into one vector g, and the scaling constant and source vector into another Vj • Out of shadow: • g(x,y): describes the surface • Vj: property of the illumination and of the camera • In shadow:

  18. From many views • From n sources, for each of which Vi is known • For each image point, stack the measurements • Solve least squares problem to obtain g One linear system per point

  19. Dealing with shadows Known Known Known Unknown

  20. Recovering normal and reflectance • Given sufficient sources, we can solve the previous equation (e.g., least squares solution) for g(x, y) • Recall that g(x, y) =r (x,y) N(x, y) , and N(x, y) is the unit normal • This means that r(x,y) =|g(x, y)| • This yields a check • If the magnitude of g(x, y) is greater than 1, there’s a problem • And N(x, y) = g(x, y) / r(x,y)

  21. Five synthetic images

  22. Recovered reflectance |g(x,y)|=ρ(x,y): the value should be in the range of 0 and 1

  23. Recovered normal field

  24. Recovering a surface from normals • Recall the surface is written as • Parametric surface • This means the normal has the form: • If we write the known vector g as • Then we obtain values for the partial derivatives of the surface:

  25. Recovering a surface from normals (cont’d) • Recall that mixed second partials are equal --- this gives us a check. We must have: (or they should be similar, at least) • We can now recover the surface height at any point by integration along some path, e.g.

  26. Recovered surface by integration

  27. x x x 1 2 n The Illumination Cone What is the set of n-pixel images of an object under all possible lighting conditions (at fixed pose)? (Belhuemuer and Kriegman IJCV 99) Single light source image N-dimensional Image Space

  28. x x x 1 2 n N-dimensional Image Space The Illumination Cone What is the set of n-pixel images of an object under all possible lighting conditions (but fixed pose)? Proposition:Due to the superposition of images, the set of images is a convex polyhedral cone in the image space. Illumination Cone 2-light source image Single light source images: Extreme rays of cone

  29. Generating the Illumination Cone For Lambertian surfaces, the illumination cone is determined by the 3D linear subspace B(x,y),where When no shadows, then Use least-squares to find 3D linear subspace, subject to the constraint fxy=fyx(Georghiades, Belhumeur, Kriegman, PAMI, June, 2001) 3Dlinear subspace a(x,y)fx(x,y) fy(x,y) albedo (surface normals) Surface. f(x,y) (albedo textured mapped on surface) Original (Training) Images

  30. Image-based rendering: Cast Shadows Single Light Source Face Movie

  31. Yale face database B • 10 Individuals • 64 Lighting Conditions • 9 Poses • => 5,760 Images Variable lighting

  32. Curious experimental fact • Prepare two rooms, one with white walls and white objects, one with black walls and black objects • Illuminate the black room with bright light, the white room with dim light • People can tell which is which (due to Gilchrist) • Why? (a local shading model predicts they can’t).

  33. Global shading models Can adjust so that local shading model predicts these pictures will be indistinguishable A view of a white room with white objects. We see a cross-section of the image intensity corresponding to the line drawn on the image. A view of a black room with black objects. We see a cross-section of the image intensity corresponding to the line drawn on the image.

  34. What’s going on here? • Local shading model is a poor description of physical processes that give rise to images • because surfaces reflect light onto one another • This is a major nuisance; the distribution of light (in principle) depends on the configuration of every radiator; big distant ones are as important as small nearby ones (solid angle) • The effects are easy to model • It appears to be hard to extract information from these models

  35. Interreflections - a global shading model • Other surfaces are now area sources - this yields: • Vis(x, u) is 1 if they can see each other, 0 if they can’t

  36. What do we do about this? • Attempt to build approximations • Ambient illumination • Study qualitative effects • reflexes • decreased dynamic range • smoothing • Try to use other information to control errors

  37. Ambient illumination • Two forms • Add a constant to the radiosity at every point in the scene to account for brighter shadows than predicted by point source model • Advantages: simple, easily managed (e.g. how would you change photometric stereo?) • Disadvantages: poor approximation (compare black and white rooms • Add a term at each point that depends on the size of the clear viewing hemisphere at each point • Advantages: appears to be quite a good approximation, but jury is out • Disadvantages: difficult to work with

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