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:20250110T023313Z LOCATION:Hall B5 (1)\, B Block\, Level 5 DTSTART;TZID=Asia/Tokyo:20241206T135600 DTEND;TZID=Asia/Tokyo:20241206T141000 UID:siggraphasia_SIGGRAPH Asia 2024_sess145_papers_1060@linklings.com SUMMARY:Multi-level Partition of Unity on Differentiable Moving Particles DESCRIPTION:Technical Papers\n\nJinjin He and Taiyuan Zhang (Dartmouth Col lege); Hiroki Kobayashi and Atsushi Kawamoto (Toyota Central R&D Labs., In c.); Yuqing Zhou (Toyota Research Institute of North America); Tsuyoshi No mura (Toyota Central R&D Labs., Inc.); and Bo Zhu (Georgia Institute of Te chnology)\n\nWe introduce a differentiable moving particle representation based on the\nmulti-level partition of unity (MPU) to represent dynamic im plicit geome-\ntries. At the core of our representation are two groups of particles, named\nfeature particles and sample particles, which can move i n space and produce\ndynamic surfaces according to external velocity field s or optimization gradi-\nents. These two particle groups iteratively guid e and correct each other by\nalternating their roles as inputs and outputs . Each feature particle carries\na set of coefficients for a local quadrat ic patch. These particle patches are\nassembled with partition-of-unity we ights to derive a continuous implicit\nglobal shape. Each sampling particl e carries its position and orientation,\nserving as dense surface samples for optimization tasks. Based on these mov-\ning particles, we develop a f ully differentiable framework to infer and evolve\nhighly detailed implici t geometries, enhanced by a multi-level background\ngrid for particle adap tivity, across different inverse tasks. We demonstrated\nthe efficacy of o ur representation through various benchmark comparisons\nwith state-of-the -art neural representations, achieving lower memory con-\nsumption, fewer training iterations, and orders of magnitude higher accuracy\nin handling topologically complex objects and dynamic tracking tasks.\n\nRegistration Category: Full Access, Full Access Supporter\n\nLanguage Format: English L anguage\n\nSession Chair: Hao (Richard) Zhang (Simon Fraser University, Am azon) URL:https://asia.siggraph.org/2024/program/?id=papers_1060&sess=sess145 END:VEVENT END:VCALENDAR