The appearance of scenes may change for many reasons, including the viewpoint, the time of day, the weather, and the seasons. Traditionally, deep neural networks are trained and evaluated using images from the same scene and domain to avoid the domain gap. Recent advances in domain adaptation have led to a new type of method that bridges such domain gaps and learns from multiple domains. This dissertation proposes methods for multi-domain adaptation for various computer vision tasks, including image classification, depth estimation, and semantic segmentation. The first work focuses on semi-supervised domain adaptation. I address this semi-supervised setting and propose to use dynamic feature alignment to address both inter- and intra-domain...
The goal of this paper is to use transfer learning for semi supervised semantic segmentation in 2D i...
The number of application areas of deep neural networks for image classification is continuously gro...
The limitations of current state-of-the-art methods for single-view depth estimation and semantic se...
The appearance of scenes may change for many reasons, including the viewpoint, the time of day, the ...
Data is the main constraint when training Deep Learning models. Real-domain data is costly to annot...
Although recent semantic segmentation methods have made remarkable progress, they still rely on larg...
This thesis comprises a body of work that investigates the use of deep learning for 2D and 3D scene ...
Modern machine learning, especially deep learning, which is used in a variety of applications, requi...
Deep neural networks, which usually require a large amount of labelled data during training process,...
Although deep neural networks have achieved remarkable results for the task of semantic segmentation...
embargoed_20241025Semantic segmentation, thanks to multimodal datasets, can be made more reliable an...
Semantic Segmentation is regarded as one of the most challenging and high-level problem, in computer...
Benefiting from the development of deep learning, researchers have made significant progress and ach...
Depth estimation from a single image represents a very exciting challenge in computer vision. While ...
Semantic segmentation is an important analysis task for the investigation of aerial imagery. Recentl...
The goal of this paper is to use transfer learning for semi supervised semantic segmentation in 2D i...
The number of application areas of deep neural networks for image classification is continuously gro...
The limitations of current state-of-the-art methods for single-view depth estimation and semantic se...
The appearance of scenes may change for many reasons, including the viewpoint, the time of day, the ...
Data is the main constraint when training Deep Learning models. Real-domain data is costly to annot...
Although recent semantic segmentation methods have made remarkable progress, they still rely on larg...
This thesis comprises a body of work that investigates the use of deep learning for 2D and 3D scene ...
Modern machine learning, especially deep learning, which is used in a variety of applications, requi...
Deep neural networks, which usually require a large amount of labelled data during training process,...
Although deep neural networks have achieved remarkable results for the task of semantic segmentation...
embargoed_20241025Semantic segmentation, thanks to multimodal datasets, can be made more reliable an...
Semantic Segmentation is regarded as one of the most challenging and high-level problem, in computer...
Benefiting from the development of deep learning, researchers have made significant progress and ach...
Depth estimation from a single image represents a very exciting challenge in computer vision. While ...
Semantic segmentation is an important analysis task for the investigation of aerial imagery. Recentl...
The goal of this paper is to use transfer learning for semi supervised semantic segmentation in 2D i...
The number of application areas of deep neural networks for image classification is continuously gro...
The limitations of current state-of-the-art methods for single-view depth estimation and semantic se...