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
ZeroRF: Fast Sparse View 360{\deg} Reconstruction with Zero Pretraining
Ruoxi Shi, Xinyue Wei, Cheng Wang, Hao Su
Reconstruction of Fields from Sparse Sensing: Differentiable Sensor Placement Enhances Generalization
Agnese Marcato, Daniel O'Malley, Hari Viswanathan, Eric Guiltinan, Javier E. Santos
Living Scenes: Multi-object Relocalization and Reconstruction in Changing 3D Environments
Liyuan Zhu, Shengyu Huang, Konrad Schindler, Iro Armeni
Reconstruction of Sound Field through Diffusion Models
Federico Miotello, Luca Comanducci, Mirco Pezzoli, Alberto Bernardini, Fabio Antonacci, Augusto Sarti