Advanced Computer Graphics: Difference between revisions

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This is because <math>E\left[\frac{b-a}{N}\sum f(X_i)\right] = \frac{b-a}{N}\sum E[f(X_i)] = \frac{1}{N}\sum \int_{a}^{b}(b-a)f(x)(1/(b-a))dx = \int_{a}^{b}f(x)dx</math><br>
This is because <math>E\left[\frac{b-a}{N}\sum f(X_i)\right] = \frac{b-a}{N}\sum E[f(X_i)] = \frac{1}{N}\sum \int_{a}^{b}(b-a)f(x)(1/(b-a))dx = \int_{a}^{b}f(x)dx</math><br>
Note that in general, if we can sample from some distribution with pdf <math>p(x)</math> then we use the estimator:
Note that in general, if we can sample from some distribution with pdf <math>p(x)</math> then we use the estimator:
* <math>E\left[ \frac{1}{N} \sum \frac{f(X_i)}{p(X_i)} \right]</math>
* <math>\hat{I} = \frac{1}{N} \sum \frac{f(X_i)}{p(X_i)}</math>


===Importance Sampling===
===Importance Sampling===

Revision as of 21:15, 12 February 2020

Classnotes for CMSC740 taught by Matthias Zwicker

Acceleration

How to speed up intersection calculations during ray tracing.

Object Subdivision

Bounding volume hierarchy

  • Create a tree where objects are placed together.
  • Each node corresponds to a region covering all the objects it has
  • You want to insert in some greedy way:
    • Minimize the size of each region
  • Subtrees may overlap and are unorder

Spacial Subdivision

Octtree, kd tree

Radiometry

Geometrical Optics

Wikipedia: Geometrical Optics

  • Light are rays which reflect, refract, and scatter

Solid Angle

  • Solid angle = area / radius^2 on a sphere

BRDF, Reflection Integral

Monte Carlo Integration

Suppose we want to estimate \(\displaystyle I_1 = \int_{a}^{b}f(x)dx\).
Then we can use \(\displaystyle \hat{I_1} = \frac{b-a}{N}\sum f(X_i)\) where \(\displaystyle X_1,...,X_n \sim Uniform(a,b)\).
This is because \(\displaystyle E\left[\frac{b-a}{N}\sum f(X_i)\right] = \frac{b-a}{N}\sum E[f(X_i)] = \frac{1}{N}\sum \int_{a}^{b}(b-a)f(x)(1/(b-a))dx = \int_{a}^{b}f(x)dx\)
Note that in general, if we can sample from some distribution with pdf \(\displaystyle p(x)\) then we use the estimator:

  • \(\displaystyle \hat{I} = \frac{1}{N} \sum \frac{f(X_i)}{p(X_i)}\)

Importance Sampling

Suppose we can only sample from pdf \(\displaystyle g(x)\) but we want to sample from pdf \(\displaystyle p(x)\) to yield a more reliable (less variance) estimate.
Then we can sample from \(\displaystyle p(x)\) using \(\displaystyle Y = F_{p}^{-1}(F_{g}(X))\).
Then apply the above equation.


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