Population Monte Carlo Path Tracing
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Lai, Yu-Chi
Dyer, Charles
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Technical Report
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University of Wisconsin-Madison Department of Computer Sciences
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Abstract
We present a novel global illumination algorithm which distributes more
image samples on regions with perceptually high variance.
Our algorithm iterates on a population of pixel positions used to
estimate the intensity of each pixel in the image.
A member kernel function, which automatically adapts to
approximate the target ditribution by using the information collected in
previous iterations,
is responsible for proposing a new sample position from the current one
during the mutation process.
The kernel function is designed to explore a proper
area around the population sample to reduce the local variance.
The resampling process eliminates samples located in the low-variance or
well-explored regions and generates new samples to achieve ergocity.
New samples are generated by considering two factors:
the perceptual variance and the stratification of the sample distributions
on the image plane.
Our results show that the visual quality of the rendered image can be improved
by exploring the correlated information among image samples.
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TR1614