Stereo Dataset
Stereo datasets are collections of paired images taken from slightly different viewpoints, crucial for developing and evaluating algorithms that estimate depth (stereo matching). Current research focuses on improving the accuracy and efficiency of these algorithms, employing deep learning models (e.g., transformers, convolutional neural networks) and exploring both supervised and unsupervised learning approaches. The availability of diverse and high-quality stereo datasets, including those from challenging real-world scenarios (e.g., adverse weather, underwater environments), is critical for advancing 3D scene reconstruction and enabling applications in robotics, autonomous driving, and remote sensing.
Papers
Scale-Invariant Monocular Depth Estimation via SSI Depth
S. Mahdi H. Miangoleh, Mahesh Reddy, Yağız Aksoy
Less Cybersickness, Please: Demystifying and Detecting Stereoscopic Visual Inconsistencies in Virtual Reality Apps
Shuqing Li, Cuiyun Gao, Jianping Zhang, Yujia Zhang, Yepang Liu, Jiazhen Gu, Yun Peng, Michael R. Lyu
An evaluation of Deep Learning based stereo dense matching dataset shift from aerial images and a large scale stereo dataset
Teng Wu, Bruno Vallet, Marc Pierrot-Deseilligny, Ewelina Rupnik
Landmark Stereo Dataset for Landmark Recognition and Moving Node Localization in a Non-GPS Battlefield Environment
Ganesh Sapkota, Sanjay Madria