刘浏  (副教授)

硕士生导师

出生日期:1993-09-21

入职时间:2022-09-08

所在单位:计算机科学与技术系

学历:研究生(博士后)

性别:男

学位:博士学位

在职信息:在职

毕业院校:中国科学技术大学

   
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AKB-48: A Real-World Articulated Object Knowledge Base

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发表刊物:IEEE Conference on Computer Vision and Pattern Recognition (CVPR)

关键字:robotics, articulated object, 6D pose estimation, robot manipulation

摘要:Human life is populated with articulated objects. A comprehensive understanding of articulated objects, namely appearance, structure, physics property, and semantics, will benefit many research communities. As current articulated object understanding solutions are usually based on synthetic object dataset with CAD models without physics properties, which prevent satisfied generalization from simulation to real-world applications in visual and robotics tasks. To bridge the gap, we present AKB-48: a large-scale Articulated object Knowledge Base which consists of 2,037 real-world 3D articulated object models of 48 categories. Each object is described by a knowledge graph ArtiKG. To build the AKB-48, we present a fast articulation knowledge modeling (FArM) pipeline, which can fulfill the ArtiKG for an articulated object within 10-15 minutes, and largely reduce the cost for object modeling in the real world. Using our dataset, we propose AKBNet, an integral pipeline for Category-level Visual Articulation Manipulation (C-VAM) task, in which we benchmark three sub-tasks, namely pose estimation, object reconstruction and manipulation. Dataset, codes, and models are publicly available at https://liuliu66. github. io/AKB-48.

合写作者:Yang Han,QIaojun Yu,Sucheng Qian,Haoyuan Fu,Wenqiang Xu

第一作者:Liu Liu

论文类型:CCF A类会议

通讯作者:Cewu Lu

页面范围:14809-14818

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发表时间:2022-06-28

上一条: Toward Real-World Category-Level Articulation Pose Estimation