Object-Agnostic Affordance Categorization via Unsupervised Learning of Graph Embeddings

Abstract

Acquiring knowledge about object interactions and affordances can facilitate scene understanding and human-robot collaboration tasks. As humans tend to use objects in many different ways depending on the scene and the objects’ availability, learning object affordances in everyday-life scenarios is a challenging task, particularly in the presence of an open set of interactions and objects. We address the problem of affordance categorization for class-agnostic objects with an open set of interactions; we achieve this by learning similarities between object interactions in an unsupervised way and thus inducing clusters of object affordances. A novel depth-informed qualitative spatial representation is proposed for the construction of Activity Graphs (AGs), which abstract from the continuous representation of spatio-temporal interactions in RGB-D videos. These AGs are clustered to obtain groups of objects with similar affordances. Our experiments in a real-world scenario demonstrate that our method learns to create object affordance clusters with a high V-measure even in cluttered scenes. The proposed approach handles object occlusions by capturing effectively possible interactions and without imposing any object or scene constraints.

Cite

Text

Toumpa and Cohn. "Object-Agnostic Affordance Categorization via Unsupervised Learning of Graph Embeddings." Journal of Artificial Intelligence Research, 2023. doi:10.1613/JAIR.1.13253

Markdown

[Toumpa and Cohn. "Object-Agnostic Affordance Categorization via Unsupervised Learning of Graph Embeddings." Journal of Artificial Intelligence Research, 2023.](https://mlanthology.org/jair/2023/toumpa2023jair-objectagnostic/) doi:10.1613/JAIR.1.13253

BibTeX

@article{toumpa2023jair-objectagnostic,
  title     = {{Object-Agnostic Affordance Categorization via Unsupervised Learning of Graph Embeddings}},
  author    = {Toumpa, Alexia and Cohn, Anthony G.},
  journal   = {Journal of Artificial Intelligence Research},
  year      = {2023},
  pages     = {1-38},
  doi       = {10.1613/JAIR.1.13253},
  volume    = {77},
  url       = {https://mlanthology.org/jair/2023/toumpa2023jair-objectagnostic/}
}