Outdoor Monocular Depth Estimation: A Research Review
- URL: http://arxiv.org/abs/2205.01399v1
- Date: Tue, 3 May 2022 10:10:08 GMT
- Title: Outdoor Monocular Depth Estimation: A Research Review
- Authors: Pulkit Vyas, Chirag Saxena, Anwesh Badapanda, Anurag Goswami
- Abstract summary: We give an overview of the available datasets, depth estimation methods, research work, trends, challenges, and opportunities that exist for open research.
To our knowledge, no openly available survey work provides a comprehensive collection of outdoor depth estimation techniques and research scope.
- Score: 0.8749675983608171
- License: http://creativecommons.org/licenses/by/4.0/
- Abstract: Depth estimation is an important task, applied in various methods and
applications of computer vision. While the traditional methods of estimating
depth are based on depth cues and require specific equipment such as stereo
cameras and configuring input according to the approach being used, the focus
at the current time is on a single source, or monocular, depth estimation. The
recent developments in Convolution Neural Networks along with the integration
of classical methods in these deep learning approaches have led to a lot of
advancements in the depth estimation problem. The problem of outdoor depth
estimation, or depth estimation in wild, is a very scarcely researched field of
study. In this paper, we give an overview of the available datasets, depth
estimation methods, research work, trends, challenges, and opportunities that
exist for open research. To our knowledge, no openly available survey work
provides a comprehensive collection of outdoor depth estimation techniques and
research scope, making our work an essential contribution for people looking to
enter this field of study.
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