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Learning Affinity with Hyperbolic Representation for Spatial Propagation

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Abstract
Recent approaches to representation learning have
successfully demonstrated the benefits in hyperbolic space, driven by an excellent ability to
make hierarchical relationships. In this work, we
demonstrate that the properties of hyperbolic geometry serve as a valuable alternative to learning
hierarchical affinity for spatial propagation tasks.
We propose a Hyperbolic Affinity learning Module (HAM) to learn spatial affinity by considering
geodesic distance on the hyperbolic space. By
simply incorporating our HAM into conventional
spatial propagation tasks, we validate its effectiveness, capturing the pixel hierarchy of affinity
maps in hyperbolic space. The proposed methodology can lead to performance improvements in
explicit propagation processes such as depth completion and semantic segmentation.
Author(s)
박진휘최재성배인환Jeon, Hae-Gon
Issued Date
2023-07-26
Type
Conference Paper
URI
https://scholar.gist.ac.kr/handle/local/21103
Publisher
International Conference on Machine Learning (ICML)
Citation
International Conference on Machine Learning (ICML)
Conference Place
US
Appears in Collections:
Department of AI Convergence > 2. Conference Papers
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