Geometric Analysis
Geometric analysis is a burgeoning field applying geometric concepts and tools to diverse problems in machine learning, computer vision, and other areas. Current research focuses on understanding the geometric properties of neural network architectures (e.g., convolutional networks, self-attention networks, and neural fields), analyzing the geometry of data manifolds and their impact on model performance, and developing novel algorithms leveraging geometric information for tasks like mesh reconstruction, image synthesis, and graph embedding. These advancements offer improved model interpretability, enhanced efficiency in complex tasks, and new approaches to solving problems in various scientific and engineering domains.
Papers
NeISF: Neural Incident Stokes Field for Geometry and Material Estimation
Chenhao Li, Taishi Ono, Takeshi Uemori, Hajime Mihara, Alexander Gatto, Hajime Nagahara, Yusuke Moriuchi
SiGeo: Sub-One-Shot NAS via Information Theory and Geometry of Loss Landscape
Hua Zheng, Kuang-Hung Liu, Igor Fedorov, Xin Zhang, Wen-Yen Chen, Wei Wen