Homography Estimation
Homography estimation aims to find the geometric transformation between two images of the same planar scene, crucial for tasks like image stitching, visual localization, and 3D reconstruction. Recent research emphasizes unsupervised and cross-modal approaches, employing deep learning architectures like transformers and convolutional neural networks, often incorporating self-supervised learning and incorporating additional sensor data (e.g., IMU, GPS) to improve robustness and accuracy. These advancements are significantly impacting various fields, including autonomous driving, robotics, and remote sensing, by enabling more accurate and reliable image-based analysis and scene understanding.
Papers
XPoint: A Self-Supervised Visual-State-Space based Architecture for Multispectral Image Registration
Ismail Can Yagmur, Hasan F. Ates, Bahadir K. Gunturk
HomoMatcher: Dense Feature Matching Results with Semi-Dense Efficiency by Homography Estimation
Xiaolong Wang, Lei Yu, Yingying Zhang, Jiangwei Lao, Lixiang Ru, Liheng Zhong, Jingdong Chen, Yu Zhang, Ming Yang
InterNet: Unsupervised Cross-modal Homography Estimation Based on Interleaved Modality Transfer and Self-supervised Homography Prediction
Junchen Yu, Si-Yuan Cao, Runmin Zhang, Chenghao Zhang, Jianxin Hu, Zhu Yu, Hui-liang Shen
A New Dataset for Monocular Depth Estimation Under Viewpoint Shifts
Aurel Pjetri (1 and 2), Stefano Caprasecca (1), Leonardo Taccari (1), Matteo Simoncini (1), Henrique Piñeiro Monteagudo (1 and 3), Walter Wallace (1), Douglas Coimbra de Andrade (4), Francesco Sambo (1), Andrew David Bagdanov (1) ((1) Verizon Connect Research, Florence, Italy, (2) Department of Information Engineering, University of Florence, Florence, Italy, (3) University of Bologna, Bologna, Italy, (4) SENAI Institute of Innovation, Rio de Janeiro, Brazil)