実時間で詳細な髪の動きを自然に表現するための学習ベース物理指向変形手法の開発
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1.Hybrid learning with multi-scale graphs for enhanced garment deformation approximation
- 关键词:
- Clothes;Graph structures;Hosiery manufacture;Supervised learning;'current;Attribution analyze;Clothing deformation;Fine-scale;Generalized pattern;Graph pooling;Hybrid learning;Learn+;Multi-scales;Physical laws
- Li, Tianxing;Shi, Rui;Zhu, Qing;Kanai, Takashi
- 《Applied Soft Computing》
- 2026年
- 186卷
- 期
- 期刊
Due to the complex behavior of clothing, modeling fine-scale garment deformation on arbitrary meshes within a unified network presents a considerable challenge. Current methods often fail to learn generalized patterns that adhere to physical laws in a controllable manner, compromising efficiency and realism in practical applications. To overcome these limitations, we introduce a novel hybrid learning approach that accurately simulates garment dynamics and intricate details. The core of our method is a progressive learning scheme that integrates the accuracy of supervised learning with the physical awareness derived from unsupervised learning. Additionally, after analyzing the nature of the garment self-collision problem, we introduce vertex repulsion-based constraints that effectively prevent conspicuous intersections within the mesh while preserving fine details. Finally, to ensure effective propagation of node information across the mesh, we propose a multi-scale graph processing technique for the garment deformation task, featuring structure-preserving pooling and unpooling strategies that significantly enhance result quality. The experimental results demonstrate that our method outperforms the state-of-the-art under multiple metric evaluations. © 2025 Elsevier B.V.
...2.Frequency-Divided Learning of Fine-Grained Clothing Behavior via Flexible Dynamic Graphs
- 关键词:
- Clothing; Deformation; Shape; Frequency conversion; Training;Optimization; Frequency-domain analysis; Deformable models; Animation;Three-dimensional displays; Clothing deformation; frequency division;graph message-passing; physical-informed learning;DEFORMATION; SHAPE
- Li, Tianxing;Shi, Rui;Kanai, Takashi;Zhu, Qing
- 《IEEE TRANSACTIONS ON VISUALIZATION AND COMPUTER GRAPHICS》
- 2025年
- 31卷
- 10期
- 期刊
Despite significant advancements in neural simulation techniques for clothing animation, these methods struggle to capture the dynamic details of garments during movement. This limitation restricts their applicability in scenarios where high-quality garment deformation is essential. To address this challenge, we introduce a novel graph learning-based approach to enhance deformation realism through designed mechanisms for mesh information propagation and external optimization strategies during model training. First, we address the issue of over-smoothing common in conventional graph processing techniques by introducing a flexible message-passing method. This approach effectively manages node interactions within the mesh, thereby improving the expressiveness of the model. Furthermore, acknowledging that uniform model supervision typically neglects high-frequency details during optimization, we analyze the spectral properties of clothing meshes. Based on this analysis, we introduce a frequency-division constraint aligned with the characteristics of different frequency bands, which aids in precisely controlling the generation of details. Our model further integrates self-collision and other physics-aware losses, enabling the learning of generalized and fine-grained dynamic deformations. Extensive evaluations and comparisons demonstrate the effectiveness of our approach, showing notable improvements over existing state-of-the-art solutions.
...3.Spectrum-Enhanced Graph Attention Network for Garment Mesh Deformation
- 关键词:
- Garment deformation; spectral bias; graph attention network; mesh-basedsimulation; Garment deformation; spectral bias; graph attention network;mesh-based simulation
- Li, Tianxing;Shi, Rui;Zhu, Qing;Zhang, Liguo;Kanai, Takashi
- 《IEEE TRANSACTIONS ON PATTERN ANALYSIS AND MACHINE INTELLIGENCE》
- 2025年
- 47卷
- 8期
- 期刊
We present a novel solution for mesh-based deformation simulation from a spectral perspective. Unlike existing approaches that demand separate training for each garment or body type and often struggle to produce rich folds and lifelike dynamics, our method achieves the quality of physics-based simulations while maintaining superior efficiency within a unified model. The key to achieve this lies in the development of a spectrum-enhanced deformation network, a result of in-depth theoretical analysis bridging neural networks and garment deformations. This enhancement compels the network to focus on learning spectral information predominantly within the frequency band associated with intricate deformations. Furthermore, building upon standard blend skinning techniques, we introduce target-aware temporal skinning weights. The weights describe how the underlying human skeleton dynamically affects the mesh vertices according to the garment and body shape, as well as the motion state. We validate our method on various garments, bodies, and motions through extensive ablation studies. Finally, we conduct comparisons to confirm its superiority in generalization, deformation quality, and performance over several state-of-the-art methods.
...4.Quadtree Tall Cells for Eulerian Liquid Simulation
- 关键词:
- Cell proliferation;Conjugate gradient method;Poisson equation;Variational techniques;Adaptivity;Cell methods;Deepwater;Eulerian;Grid structures;Liquid simulations;Octrees;Quad trees;Tall grid;Water simulations
- Narita, Fumiya;Ochiai, Nimiko;Kanai, Takashi;Ando, Ryoichi
- 《SIGGRAPH 2025 Conference Papers》
- 2025年
- August 10, 2025 - October 14, 2025
- Vancouver, BC, Canada
- 会议
This paper introduces a novel grid structure that extends tall cell methods for efficient deep water simulation. Unlike previous tall cell methods, which are designed to capture all the fine details around liquid surfaces, our approach subdivides tall cells horizontally, allowing for more aggressive adaptivity and a significant reduction in the number of cells. The foundation of our method lies in a new variational formulation of Poisson’s equations for pressure solve tailored for tall-cell grids, which naturally handles the transition of variable-sized cells. This variational view not only permits the use of the efficacy-proven conjugate gradient method but also facilitates monolithic two-way coupled rigid bodies. The key distinction between our method and previous general adaptive approaches, such as tetrahedral or octree grids, is the simplification of adaptive grid construction. Our method performs grid subdivision in a quadtree fashion, rather than an octree. These 2D cells are then simply extended vertically to complete the tall cell population. We demonstrate that this novel form of adaptivity, which we refer to as quadtree tall cells, delivers superior performance compared to traditional uniform tall cells. © 2025 Copyright held by the owner/author(s).
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