作者
Benjamin Ummenhofer, Huizhong Zhou, Jonas Uhrig, Nikolaus Mayer, Eddy Ilg, Alexey Dosovitskiy, Thomas Brox
发表日期
2017
研讨会论文
Proceedings of the IEEE conference on computer vision and pattern recognition
页码范围
5038-5047
简介
In this paper we formulate structure from motion as a learning problem. We train a convolutional network end-to-end to compute depth and camera motion from successive, unconstrained image pairs. The architecture is composed of multiple stacked encoder-decoder networks, the core part being an iterative network that is able to improve its own predictions. The network estimates not only depth and motion, but additionally surface normals, optical flow between the images and confidence of the matching. A crucial component of the approach is a training loss based on spatial relative differences. Compared to traditional two-frame structure from motion methods, results are more accurate and more robust. In contrast to the popular depth-from-single-image networks, DeMoN learns the concept of matching and, thus, better generalizes to structures not seen during training.
引用总数
20172018201920202021202220232024171061331441551138841
学术搜索中的文章
B Ummenhofer, H Zhou, J Uhrig, N Mayer, E Ilg… - Proceedings of the IEEE conference on computer …, 2017