Improving Depth Estimation using Location Information
Zaitoon, Ahmed; Hossam El DIn Hassan Abdelmunim; Abbas, Hazem;
Abstract
The ability to accurately estimate depth information is crucial for many autonomous applications to recognize the surrounded environment and predict the depth of important objects. One of the most recently used techniques is monocular depth estimation where the depth map is inferred from a single image. This paper improves the self-supervised deep learning techniques to perform accurate generalized monocular depth esti-mation. The main idea is to train the deep model to take into account a sequence of the different frames, each frame is geo-tagged with its location information. This makes the model able to enhance depth estimation given area semantics. We demonstrate the effectiveness of our model to improve depth estimation results. The model is trained in a realistic environment and the results show improvements in the depth map after adding the location data to the model training phase.
Other data
| Title | Improving Depth Estimation using Location Information | Authors | Zaitoon, Ahmed; Hossam El DIn Hassan Abdelmunim ; Abbas, Hazem | Keywords | Deep learning;Depth estimation;Location-based systems;Monocular depth estimation;Computer Science - Computer Vision and Pattern Recognition;Computer Science - Computer Vision and Pattern Recognition;Computer Science - Artificial Intelligence;Computer Science - Computers and Society | Issue Date | 1-Jan-2021 | Conference | Proceedings 2021 16th International Conference on Computer Engineering and Systems Icces 2021 | ISBN | [9781665408677] | DOI | 10.1109/ICCES54031.2021.9686181 | Scopus ID | 2-s2.0-85125313056 |
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