Full State Reconstruction
Full state reconstruction aims to recover complete and accurate representations of systems or objects from incomplete or noisy data. Current research focuses on diverse applications, employing various techniques including neural networks (e.g., UNets, Transformers, diffusion models), implicit neural representations, and spectral graph theory, often tailored to specific data modalities (images, point clouds, time series, etc.). These advancements improve accuracy and efficiency in diverse fields, ranging from robotics and computer vision (3D object reconstruction, hand tracking) to medical imaging (CT and MRI reconstruction) and speech processing (efficient speech separation). The resulting improvements in data analysis and system modeling have significant implications for various scientific and engineering disciplines.
Papers
DualPM: Dual Posed-Canonical Point Maps for 3D Shape and Pose Reconstruction
Ben Kaye, Tomas Jakab, Shangzhe Wu, Christian Rupprecht, Andrea Vedaldi
MT3DNet: Multi-Task learning Network for 3D Surgical Scene Reconstruction
Mithun Parab, Pranay Lendave, Jiyoung Kim, Thi Quynh Dan Nguyen, Palash Ingle
Reconstruction of boosted and resolved multi-Higgs-boson events with symmetry-preserving attention networks
Haoyang Li, Marko Stamenkovic, Alexander Shmakov, Michael Fenton, Darius Shih-Chieh Chao, Kaitlyn Maiya White, Caden Mikkelsen, Jovan Mitic, Cristina Mantilla Suarez, Melissa Quinnan, Greg Landsberg, Harvey Newman, Pierre Baldi, Daniel Whiteson, Javier Duarte
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
Uniform Attention Maps: Boosting Image Fidelity in Reconstruction and Editing
Wenyi Mo, Tianyu Zhang, Yalong Bai, Bing Su, Ji-Rong Wen
GausSurf: Geometry-Guided 3D Gaussian Splatting for Surface Reconstruction
Jiepeng Wang, Yuan Liu, Peng Wang, Cheng Lin, Junhui Hou, Xin Li, Taku Komura, Wenping Wang
LegoPET: Hierarchical Feature Guided Conditional Diffusion for PET Image Reconstruction
Yiran Sun, Osama Mawlawi
On the Reconstruction of Training Data from Group Invariant Networks
Ran Elbaz, Gilad Yehudai, Meirav Galun, Haggai Maron
Quadratic Gaussian Splatting for Efficient and Detailed Surface Reconstruction
Ziyu Zhang, Binbin Huang, Hanqing Jiang, Liyang Zhou, Xiaojun Xiang, Shunhan Shen
Event-boosted Deformable 3D Gaussians for Fast Dynamic Scene Reconstruction
Wenhao Xu, Wenming Weng, Yueyi Zhang, Ruikang Xu, Zhiwei Xiong