Abstract

Depth estimation is a computer vision technique that is critical for autonomous schemes for sensing their surroundings and predict their own condition. Traditional estimating approaches, such as structure from motion besides stereo vision similarity, rely on feature communications from several views to provide depth information. In the meantime, the depth maps anticipated are scarce. Gathering depth information via monocular depth estimation is an ill-posed issue, according to a substantial corpus of deep learning approaches recently suggested. Estimation of Monocular depth with deep learning has gotten a lot of interest in current years, thanks to the fast expansion of deep neural networks, and numerous strategies have been developed to solve this issue. In this study, we want to give a comprehensive assessment of the methodologies often used in the estimation of monocular depth. The purpose of this study is to look at recent advances in deep learning-based estimation of monocular depth. To begin, we'll go through the various depth estimation techniques and datasets for monocular depth estimation. A complete overview of multiple deep learning methods that use transfer learning Network designs, including several combinations of encoders and decoders, is offered. In addition, multiple deep learning-based monocular depth estimation approaches and models are classified. Finally, the use of transfer learning approaches to monocular depth estimation is illustrated.

Highlights

  • Estimation of monocular depth, which seeks to estimate the depth of each pixel given a single input RGB image, is a key job in computer vision

  • Convolutional Neural Networks (CNNs)-based algorithms have increased the performance of depth estimation, thanks to the efficiency of deep learning

  • Convolutional neural networks (CNNs), recurrent neural networks (RNNs), variational autoencoders (VAEs), and generative adversary networks are some of the deep learning models that have shown to be successful in monocular depth estimation (GANs)

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Summary

. Introduction

Estimation of monocular depth, which seeks to estimate the depth of each pixel given a single input RGB image, is a key job in computer vision. Many downstream applications, such as robotics, scene interpretation, 3D reconstruction, autonomous driving, medical imaging, and virtual reality, benefit from it. Depth maps were calculated using depth signals such as vanishing points, focus and defocus, in addition to shadow. After the introduction of computer vision, several features made by hand and graph models from probabilistic analysis were utilized to predict maps of monocular depth utilizing constraint and non-constraint learning in the machine learning development.

Methods of Depth Estimation Geometry-dependent methods
Related Work
Models and Methods based on Deep Learning for Estimation of Monocular Depth
Monocular depth estimate with deep learning models
Monocular Depth Estimation Transfer Learning Techniques
CNN Architectures
Findings
Conclusion
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