Monocular Image
Monocular image analysis focuses on extracting three-dimensional information and understanding from a single two-dimensional image, a challenging problem with broad applications. Current research heavily utilizes deep learning, employing various neural network architectures like transformers and convolutional neural networks, often incorporating techniques such as self-supervised learning and data augmentation to improve accuracy and robustness. These advancements are driving progress in diverse fields, including autonomous navigation, robotics, 3D modeling, and medical imaging, by enabling efficient and cost-effective 3D scene understanding and object manipulation. The ability to accurately interpret depth, pose, and other geometric properties from a single image is significantly impacting the feasibility and performance of numerous applications.
Papers
Does Proprietary Software Still Offer Protection of Intellectual Property in the Age of Machine Learning? -- A Case Study using Dual Energy CT Data
Andreas Maier, Seung Hee Yang, Farhad Maleki, Nikesh Muthukrishnan, Reza Forghani
MobRecon: Mobile-Friendly Hand Mesh Reconstruction from Monocular Image
Xingyu Chen, Yufeng Liu, Yajiao Dong, Xiong Zhang, Chongyang Ma, Yanmin Xiong, Yuan Zhang, Xiaoyan Guo