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Improved Stochastic Progressive Photon Mapping with Metropolis Sampling
Authors:Jiating Chen  Bin Wang  Jun‐Hai Yong
Affiliation:1. School of Software, Tsinghua University, Beijing, China;2. Department of Computer Science and Technology, Tsinghua University, Beijing, China;3. Key Laboratory for Information System Security, Ministry of Education of China, Beijing, China;4. Tsinghua National Laboratory for Information Science and Technology, Beijing, China
Abstract:This paper presents an improvement to the stochastic progressive photon mapping (SPPM), a method for robustly simulating complex global illumination with distributed ray tracing effects. Normally, similar to photon mapping and other particle tracing algorithms, SPPM would become inefficient when the photons are poorly distributed. An inordinate amount of photons are required to reduce the error caused by noise and bias to acceptable levels. In order to optimize the distribution of photons, we propose an extension of SPPM with a Metropolis‐Hastings algorithm, effectively exploiting local coherence among the light paths that contribute to the rendered image. A well‐designed scalar contribution function is introduced as our Metropolis sampling strategy, targeting at specific parts of image areas with large error to improve the efficiency of the radiance estimator. Experimental results demonstrate that the new Metropolis sampling based approach maintains the robustness of the standard SPPM method, while significantly improving the rendering efficiency for a wide range of scenes with complex lighting.
Keywords:I.3.3 [Computer Graphics]: Picture/Image Generation  I.3.7 [Computer Graphics]: Three‐Dimensional Graphics and Realism
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