Learning to Approximate Directional Fields Defined over 2D Planes
Proc. of AIST, 2019 Reconstruction of directional fields is a need in many geometry processing tasks, such as image tracing, extraction of 3D geometric features, and finding principal surface directions. A common approach to the construction of directional fields from data relies on complex optimiza...
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Zusammenfassung: | Proc. of AIST, 2019 Reconstruction of directional fields is a need in many geometry processing
tasks, such as image tracing, extraction of 3D geometric features, and finding
principal surface directions. A common approach to the construction of
directional fields from data relies on complex optimization procedures, which
are usually poorly formalizable, require a considerable computational effort,
and do not transfer across applications. In this work, we propose a deep
learning-based approach and study the expressive power and generalization
ability. |
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DOI: | 10.48550/arxiv.1907.00559 |