posted by organizer: daerduomkch || 2027 views || tracked by 1 users: [display]

StruCo3D 2021 : Structural and Compositional Learning on 3D Data (ICCV 2021 Workshop)

FacebookTwitterLinkedInGoogle

Link: https://geometry.stanford.edu/struco3d
 
When Oct 11, 2021 - Oct 17, 2021
Where Virtual
Submission Deadline Jul 26, 2021
Notification Due Aug 9, 2021
Final Version Due Aug 16, 2021
Categories    computer vision   computer graphics   robotics   structure learning
 

Call For Papers

3D structure and compositionality lie at the core of many methods for different tasks in computer vision, graphics and robotics, including but not limited to recognition, reconstruction, generation, planning, manipulation, mapping and embodied perception. Unlike traditional connectionist approaches in deep learning, structural and compositional learning includes components that lean more towards the symbolic end of the spectrum, where data or functions are represented by a sparse set of separate and more clearly defined concepts. For example, in 3D objects, this could be a decomposition of an object into spatially localized parts and a sparse set of relationships between them, or in scenes, it could be a scene graph, where rich inter-object relationships are described. Similarly, a navigation or interaction task in robotics can also be decomposed into separate parts of concepts or submodules that are related by spatial, causal, or semantic relationships.

People from different fields or backgrounds use different structural and compositional representations of their 3D data for different applications. We bring them together in this workshop to have an explicit discussion of the advantages and disadvantages of different representations and approaches, as well as to share, discuss and debate the diverse opinions regarding the following questions:

- Which types of structure should we use for different tasks and applications in graphics, vision and robotics?
- How should we factorize a given problem into sparse concepts that make up the structure?
- How should we factorize different types of 3D data into sparse sets of components, relationships, or operators?
- Which algorithms are best suited for a given type of structure?
- How should we mix structural and non-structural approaches?
- Which parts of a problem are suited for structural approaches, and which ones are better handled without structure?

We accept both archival full paper (up to 8 pages) and non-archival short paper (up to 4 pages) submissions. Every accepted paper will have the opportunity to give a 10-min spotlight presentation and host two 30-min poster sessions (12-hours separated).

Please refer to the workshop website and CFP page for more details: https://geometry.stanford.edu/struco3d

Contact: struco3d@googlegroups.com or kaichun@cs.stanford.edu

Related Resources

SPIE-Ei/Scopus-DMNLP 2025   2025 2nd International Conference on Data Mining and Natural Language Processing (DMNLP 2025)-EI Compendex&Scopus
IEEE-Ei/Scopus-ITCC 2025   2025 5th International Conference on Information Technology and Cloud Computing (ITCC 2025)-EI Compendex
ICoSR 2025   2025 4th International Conference on Service Robotics
IEEE-Ei/Scopus-CNIOT 2025   2025 IEEE 6th International Conference on Computing, Networks and Internet of Things (CNIOT 2025) -EI Compendex
ICMIP 2025   ACM--2025 10th International Conference on Multimedia and Image Processing (ICMIP 2025)
CETA--EI 2025   2025 4th International Conference on Computer Engineering, Technologies and Applications (CETA 2025)
SPIE-Ei/Scopus-CMLDS 2025   2025 2nd International Conference on Computing, Machine Learning and Data Science (CMLDS 2025) -EI Compendex & Scopus
SIPO 2025   9th International Conference on Signal, Image Processing
CSITEC 2025   11th International Conference on Computer Science, Information Technology
IEEE-Ei/Scopus-CWCBD 2025   2025 6th International Conference on Wireless Communications and Big Data (CWCBD 2025) -EI Compendex