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 (1)\, B Block\, Level 5 DTSTART;TZID=Asia/Tokyo:20241205T130000 DTEND;TZID=Asia/Tokyo:20241205T141000 UID:siggraphasia_SIGGRAPH Asia 2024_sess130@linklings.com SUMMARY:Neural Shapes DESCRIPTION:Technical Papers\n\nEach Paper gives a 10 minute presentation. \n\nNeural Laplacian Operator for 3D Point Clouds\n\nThe Laplacian operato r holds a crucial role in 3D geometry processing, yet it is still challeng ing to define it on point clouds.\nPrevious works mainly focused on constr ucting a local triangulation around each point to approximate the underlyi ng manifold for defining the Laplacian operator, which may...\n\n\nBo Pang , Zhongtian Zheng, Yilong Li, Guoping Wang, and Peng-Shuai Wang (Peking Un iversity)\n---------------------\nNASM: Neural Anisotropic Surface Meshing \n\nThis paper introduces a new learning-based method, NASM, for anisotrop ic surface meshing. Our key idea is to propose a graph neural network to e mbed an input mesh into a high-dimensional (high-d) Euclidean embedding sp ace to preserve curvature-based anisotropic metric by using a dot product loss bet...\n\n\nHongbo Li, Haikuan Zhu, and Sikai Zhong (Wayne State Univ ersity); Ningna Wang (University of Texas at Dallas); Cheng Lin (Universit y of Hong Kong); Xiaohu Guo (University of Texas at Dallas); Shiqing Xin ( Shandong University); Wenping Wang (Texas A&M University); and Jing Hua an d Zichun Zhong (Wayne State University)\n---------------------\nDirect Man ipulation of Procedural Implicit Surfaces\n\nProcedural implicit surfaces are a popular representation for shape modeling. They provide a simple fra mework for complex geometric operations such as Booleans, blending and def ormations. However, their editability remains a challenging task: as the d efinition of the shape is purely implicit, direct...\n\n\nMarzia Riso (Sap ienza University of Rome, Adobe); Élie Michel, Axel Paris, Valentin Descha intre, and Mathieu Gaillard (Adobe); and Fabio Pellacini (University of Mo dena and Reggio Emilia)\n---------------------\nControllable Shape Modelin g with Neural Generalized Cylinder\n\nNeural shape representation, such as neural signed distance field (NSDF), becomes more and more popular in sha pe modeling as its ability to deal with complex topology and arbitrary res olution. Due to the implicit manner to use features for shape representati on, manipulating the shapes faces inherent...\n\n\nXiangyu Zhu (Chinese Un iversity of Hong Kong, Shenzhen); Zhiqin Chen (Adobe Research); Ruizhen Hu (Shenzhen University (SZU)); and Xiaoguang Han (Chinese University of Hon g Kong, Shenzhen)\n---------------------\nSRIF: Semantic Shape Registratio n Empowered by Diffusion-based Image Morphing and Flow Estimation\n\nIn th is paper, we propose \textbf{SRIF}, a novel \textbf{S}emantic shape \textb f{R}egistration framework based on diffusion-based \textbf{I}mage morphing and \textbf{F}low Estimation. \nMore concretely, given a pair of extrinsi cally aligned shapes, we first render them from multi-views, and then we u ...\n\n\nMingze Sun (Tsinghua shenzhen international graduate school); Che n Guo and Puhua Jiang (Tsinghua shenzhen international graduate school, Pe ngcheng Lab); and Shiwei Mao, Yurun Chen, and Ruqi Huang (Tsinghua shenzhe n international graduate school)\n---------------------\nSpaceMesh: A Cont inuous Representation for Learning Manifold Surface Meshes\n\nMeshes are u biquitous in visual computing and simulation, yet most existing machine le arning techniques represent meshes only indirectly, e.g. as the level set of a scalar field, or deformation of a template, or as a disordered triang le soup lacking local structure. This work presents a scheme to di...\n\n\ nTianchang Shen (University of Toronto, NVIDIA Research) and Zhaoshuo Li, Marc Law, Matan Atzmon, Sanja Fidler, James Lucas, Jun Gao, and Nicholas S harp (NVIDIA Research)\n\nRegistration Category: Full Access, Full Access Supporter\n\nLanguage Format: English Language\n\nSession Chair: Noam Aige rman (University of Montreal) END:VEVENT END:VCALENDAR