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:20241205T134600 DTEND;TZID=Asia/Tokyo:20241205T135800 UID:siggraphasia_SIGGRAPH Asia 2024_sess131_papers_805@linklings.com SUMMARY:Manifold Sampling for Differentiable Uncertainty in Radiance Field s DESCRIPTION:Technical Papers\n\nLinjie Lyu (Max Planck Institute for Infor matics), Ayush Tewari (MIT CSAIL), Marc Habermann (Max Planck Institute fo r Informatics), Shunsuke Saito and Michael Zollhöfer (Meta Codec Avatars L ab), and Thomas Leimkühler and Christian Theobalt (Max Planck Institute fo r Informatics)\n\nRadiance fields are powerful and, hence, popular models for representing the appearance of complex scenes. Yet, constructing them based on image observations gives rise to ambiguities and uncertainties. W e propose a versatile approach for learning Gaussian radiance fields with explicit and fine-grained uncertainty estimates that impose only little ad ditional cost compared to uncertainty-agnostic training. Our key observati on is that uncertainties can be modeled as a low-dimensional manifold in t he space of radiance field parameters that is highly amenable to Monte Car lo sampling. Importantly, our uncertainties are differentiable and, thus, allow for gradient-based optimization of subsequent captures that optimall y reduce ambiguities. We demonstrate state-of-the-art performance on next- best-view planning tasks, including high-dimensional illumination planning for optimal radiance field relighting quality.\n\nRegistration Category: Full Access, Full Access Supporter\n\nLanguage Format: English Language\n\ nSession Chair: Seungyong Lee (POSTECH) URL:https://asia.siggraph.org/2024/program/?id=papers_805&sess=sess131 END:VEVENT END:VCALENDAR