BEGIN:VCALENDAR VERSION:2.0 PRODID:Linklings LLC BEGIN:VTIMEZONE TZID:Asia/Tokyo X-LIC-LOCATION:Asia/Tokyo BEGIN:STANDARD TZOFFSETFROM:+0900 TZOFFSETTO:+0900 TZNAME:JST DTSTART:18871231T000000 END:STANDARD END:VTIMEZONE BEGIN:VEVENT DTSTAMP:20250110T023312Z LOCATION:Hall B5 (2)\, B Block\, Level 5 DTSTART;TZID=Asia/Tokyo:20241205T090000 DTEND;TZID=Asia/Tokyo:20241205T101000 UID:siggraphasia_SIGGRAPH Asia 2024_sess125@linklings.com SUMMARY:(Don't) Make Some Noise: Denoising DESCRIPTION:Technical Papers\n\nEach Paper gives a 10 minute presentation. \n\nFiltering-Based Reconstruction for Gradient-Domain Rendering\n\nGradie nt-domain rendering methods reconstruct color images based on the Poisson equation with gradients from correlated sampling. The relatively low varia nce in the gradient estimation facilitates convergence but the inevitable noises make the solving process prone to unpleasant spiky artifacts.\n\nWe ...\n\n\nDifei Yan and Shaokun Zheng (Tsinghua University), Ling-Qi Yan (U niversity of California Santa Barbara), and Kun Xu (Tsinghua University)\n ---------------------\nA Statistical Approach to Monte Carlo Denoising\n\n The stochastic nature of modern Monte Carlo (MC) rendering methods inevita bly produces noise in rendered images for a practical number of samples pe r pixel. The problem of denoising these images has been widely studied, wi th most recent methods relying on data-driven, pretrained neural networks. In ...\n\n\nHiroyuki Sakai and Christian Freude (Technical University of Vienna), Thomas Auzinger (Institute of Science and Technology Austria), an d David Hahn and Michael Wimmer (Technical University of Vienna)\n-------- -------------\nSpatiotemporal Bilateral Gradient Filtering for Inverse Ren dering\n\nIn inverse rendering, gradient-based methods, which have seen gr eat progress in the recent years, are typically used in conjunction with t he Adam optimizer. While Adam usually improves convergence by temporally f iltering gradients over previous iterations to reduce noise, it is not tai lored to inver...\n\n\nWesley Chang, Xuanda Yang, Yash Belhe, Ravi Ramamoo rthi, and Tzu-Mao Li (University of California San Diego)\n--------------- ------\nNeural Kernel Regression for Consistent Monte Carlo Denoising\n\nU nbiased Monte Carlo path tracing that is extensively used in realistic ren dering produces undesirable noise, especially with low samples per pixel ( spp). Recently, several methods have coped with this problem by importing unbiased noisy images and auxiliary features to neural networks to either pre...\n\n\nQi Wang (State Key Laboratory of CAD&CG, Zhejiang University); Pengju Qiao (Institute of Software Chinese Academy of Sciences; State Key Laboratory of CAD&CG, Zhejiang University); Yuchi Huo (State Key Laborato ry of CAD&CG, Zhejiang University; Zhejiang University); Shiji Zhai (Insti tute of Computing Technology, Chinese Academy of Sciences); Zixuan Xie (In stitute of Computing Technology, Chinese Academy of Sciences; Zhejiang Lab ); Rengan Xie (State Key Laboratory of CAD&CG, Zhejiang University); Wei H ua (Zhejiang Lab); Hujun Bao (State Key Laboratory of CAD&CG, Zhejiang Uni versity; Zhejiang University); and Tao Liu (Shanghai Maritime University, College of Transport & Communications)\n---------------------\nOnline Neur al Denoising with Cross-Regression for Interactive Rendering\n\nGenerating a rendered image sequence through Monte Carlo ray tracing is an appealing option when one aims to accurately simulate various lighting effects. Unf ortunately, interactive rendering scenarios limit the allowable sample siz e for such sampling-based light transport algorithms, resulting in a...\n\ n\nHajin Choi (Gwangju Institute of Science and Technology); Seokpyo Hong (Samsung Advanced Institute of Technology); Inwoo Ha (Samsung Advanced Ins titute of Technology, KAIST); Nahyup Kang (Samsung Advanced Institute of T echnology); and Bochang Moon (Gwangju Institute of Science and Technology) \n\nRegistration Category: Full Access, Full Access Supporter\n\nLanguage Format: English Language\n\nSession Chair: Wenzel Jakob (École Polytechniq ue Fédérale de Lausanne) END:VEVENT END:VCALENDAR