In this thesis we leverage domain knowledge, specifically of road scenes, to provide a self-supervision signal, reduce the labelling requirements, improve the convergence of training and introduce interpretable parameters based on vastly simplified models. Specifically, we chose to research the value of applying domain knowledge to the popular tasks of semantic segmentation and relative pose estimation towards better understanding road scenes. In particular we leverage semantic and geometric scene understanding separately in the first two contributions and then seek to combine them in the third contribution. Firstly, we show that hierarchical structure in class labels for training networks for tasks such as semantic segmentation can be u...
Semantic labelling is highly correlated with geometry and radiance reconstruction, as scene entities...
Identifying traversable space is one of the most important problems in autonomous robot navigation a...
The limitations of current state-of-the-art methods for single-view depth estimation and semantic se...
In this thesis we leverage domain knowledge, specifically of road scenes, to provide a self-supervis...
Autonomous vehicles require an accurate understanding of the scene for safe operation in real-world ...
Depth information is a vital component for perception of the 3D structure of vehicle's surroundings ...
The problem of understanding road scenes has been on the fore-front in the computer vision community...
3D scene understanding is an essential research topic in the field of Visual Odometry (VO). VO is us...
Depth estimation from a single image represents a very exciting challenge in computer vision. While ...
Convolutional neural networks excel at extracting features from signals. These features are able to ...
In this thesis, three well known self-supervised methods have been implemented and trained on road s...
Although recent semantic segmentation methods have made remarkable progress, they still rely on larg...
<p>Recent advances in representation learning have led to an increasing variety of vision-based appr...
In the fields of VR, AR, and autonomous driving, it is critical to track the accurate location of an...
Despite learning based methods showing promising results in single view depth estimation and visual ...
Semantic labelling is highly correlated with geometry and radiance reconstruction, as scene entities...
Identifying traversable space is one of the most important problems in autonomous robot navigation a...
The limitations of current state-of-the-art methods for single-view depth estimation and semantic se...
In this thesis we leverage domain knowledge, specifically of road scenes, to provide a self-supervis...
Autonomous vehicles require an accurate understanding of the scene for safe operation in real-world ...
Depth information is a vital component for perception of the 3D structure of vehicle's surroundings ...
The problem of understanding road scenes has been on the fore-front in the computer vision community...
3D scene understanding is an essential research topic in the field of Visual Odometry (VO). VO is us...
Depth estimation from a single image represents a very exciting challenge in computer vision. While ...
Convolutional neural networks excel at extracting features from signals. These features are able to ...
In this thesis, three well known self-supervised methods have been implemented and trained on road s...
Although recent semantic segmentation methods have made remarkable progress, they still rely on larg...
<p>Recent advances in representation learning have led to an increasing variety of vision-based appr...
In the fields of VR, AR, and autonomous driving, it is critical to track the accurate location of an...
Despite learning based methods showing promising results in single view depth estimation and visual ...
Semantic labelling is highly correlated with geometry and radiance reconstruction, as scene entities...
Identifying traversable space is one of the most important problems in autonomous robot navigation a...
The limitations of current state-of-the-art methods for single-view depth estimation and semantic se...