3D Shape
3D shape research focuses on accurately representing and manipulating three-dimensional objects from various data sources, aiming for robust and efficient methods for reconstruction, generation, and manipulation. Current research emphasizes the development and application of deep learning models, including diffusion models, transformers, and implicit neural representations (like signed distance functions and Gaussian splatting), often incorporating techniques like point cloud processing and multi-view geometry. These advancements have significant implications for diverse fields, such as robotics, computer-aided design, medical imaging, and cultural heritage preservation, by enabling more accurate 3D modeling and analysis from limited or noisy data.
Papers
Volumetric Reconstruction of Prostatectomy Specimens from Histology
Tom Bisson, Isil Dogan O, Iris Piwonski, Tim-Rasmus Kiehl, Georg Lukas Baumgärtner, Rita Carvalho, Peter Hufnagl, Tobias Penzkofer, Norman Zerbe, Sefer Elezkurtaj
AlphaTablets: A Generic Plane Representation for 3D Planar Reconstruction from Monocular Videos
Yuze He, Wang Zhao, Shaohui Liu, Yubin Hu, Yushi Bai, Yu-Hui Wen, Yong-Jin Liu
DreamSat: Towards a General 3D Model for Novel View Synthesis of Space Objects
Nidhi Mathihalli, Audrey Wei, Giovanni Lavezzi, Peng Mun Siew, Victor Rodriguez-Fernandez, Hodei Urrutxua, Richard Linares
Generating CAD Code with Vision-Language Models for 3D Designs
Kamel Alrashedy, Pradyumna Tambwekar, Zulfiqar Zaidi, Megan Langwasser, Wei Xu, Matthew Gombolay