3D Reconstruction
3D reconstruction aims to create three-dimensional models from various two-dimensional data sources, such as images or videos, with applications spanning diverse fields. Current research emphasizes improving accuracy and efficiency, particularly in challenging scenarios like sparse viewpoints, dynamic scenes, and occluded objects. Popular approaches utilize neural radiance fields (NeRFs), Gaussian splatting, and other deep learning architectures, often incorporating techniques like active view selection and multi-view stereo to enhance reconstruction quality. These advancements are driving progress in areas such as robotics, medical imaging, and remote sensing, enabling more accurate and detailed 3D models for various applications.
Papers
Bag of Views: An Appearance-based Approach to Next-Best-View Planning for 3D Reconstruction
Sara Hatami Gazani, Matthew Tucsok, Iraj Mantegh, Homayoun Najjaran
3D detection of roof sections from a single satellite image and application to LOD2-building reconstruction
Johann Lussange, Mulin Yu, Yuliya Tarabalka, Florent Lafarge
NAVI: Category-Agnostic Image Collections with High-Quality 3D Shape and Pose Annotations
Varun Jampani, Kevis-Kokitsi Maninis, Andreas Engelhardt, Arjun Karpur, Karen Truong, Kyle Sargent, Stefan Popov, André Araujo, Ricardo Martin-Brualla, Kaushal Patel, Daniel Vlasic, Vittorio Ferrari, Ameesh Makadia, Ce Liu, Yuanzhen Li, Howard Zhou
Enhancing Neural Rendering Methods with Image Augmentations
Juan C. Pérez, Sara Rojas, Jesus Zarzar, Bernard Ghanem