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 B7 (1)\, B Block\, Level 7 DTSTART;TZID=Asia/Tokyo:20241206T095800 DTEND;TZID=Asia/Tokyo:20241206T100900 UID:siggraphasia_SIGGRAPH Asia 2024_sess141_papers_472@linklings.com SUMMARY:Neural Garment Dynamic Super-Resolution DESCRIPTION:Technical Papers\n\nMeng Zhang and Jun Li (Nanjing University of Science and Technology)\n\nAchieving efficient, high-fidelity, high-res olution garment simulation is challenging due to its computational demands . Conversely, low-resolution garment simulation is more accessible and ide al for low-budget devices like smartphones. In this paper, we introduce a lightweight, learning-based method for garment dynamic super-resolution, d esigned to efficiently enhance high-resolution, high-frequency details in low-resolution garment simulations. Starting with low-resolution garment s imulation and underlying body motion, we utilize a mesh-graph-net to compu te super-resolution features based on coarse garment dynamics and garment- body interactions. These features are then used by a hyper-net to construc t an implicit function of detailed wrinkle residuals for each coarse mesh triangle. Considering the influence of coarse garment shapes on detailed w rinkle performance, we correct the coarse garment shape and predict detail ed wrinkle residuals using these implicit functions. Finally, we generate detailed high-resolution garment geometry by applying the detailed wrinkle residuals to the corrected coarse garment. Our method enables roll-out pr ediction by iteratively using its predictions as input for subsequent fram es, producing fine-grained wrinkle details to enhance the low-resolution s imulation. Despite training on a small dataset, our network robustly gener alizes to different body shapes, motions, and garment types not present in the training data. We demonstrate significant improvements over state-of- the-art alternatives, particularly in enhancing the quality of high-freque ncy, fine-grained wrinkle details.\n\nRegistration Category: Full Access, Full Access Supporter\n\nLanguage Format: English Language\n\nSession Chai r: Sheldon Andrews (École de technologie supérieure (ÉTS)) URL:https://asia.siggraph.org/2024/program/?id=papers_472&sess=sess141 END:VEVENT END:VCALENDAR