Physics-based vision explores computer vision and graphics problems by applying methods based upon physical models. On the other hand, deep learning is a learning-based technique, where a substantial number of observations are used to train an expressive yet unexplainable neural network model. In this thesis, we propose the concept of a model-based decoder, which is an unlearnable and differentiable neural layer being designed according to a physics-based model. Constructing neural networks with such model-based decoders afford the model strong learning capability as well as the potential to respect the underlying physics. We start the study by developing a toolbox of differentiable photometric layers ported from classical photometric te...
The task of computer vision is to make computers understand the physical word through images. Lighti...
Deep learning has significantly advanced computer vision in the past decade, paving the way for prac...
Deep learning is experiencing a revolution with tremendous progress because of the availability of l...
Estimating material properties and modeling the appearance of an object under varying illumination c...
University of Technology Sydney. Faculty of Engineering and Information Technology.Enhancing image q...
Computer vision is a research field that aims to automate the procedure of gaining abstract understa...
Physics based vision attempts to model and invert light transport in order to extract information (s...
The work in this dissertation was done as a major shift in machine perception and deep learning rese...
Deep neural networks have achieved state-of-the-art performance for various machine learning tasks i...
Deep learning has exhibited remarkable performance on various computer vision tasks. However, these ...
This thesis explores the use of modern deep neural networks to learn visual concepts with fewer huma...
Over the last decade, deep learning methods have achieved success in diverse domains, becoming one o...
Deep learning has become the dominant approach in artificial intelligence to solve complex data-driv...
Deep Convolutional Neural Networks, which are a family of biologically inspired machine vision algor...
Georgoulis S., ''Extraction of surface characteristics and Lighting in 3D reconstruction from uncali...
The task of computer vision is to make computers understand the physical word through images. Lighti...
Deep learning has significantly advanced computer vision in the past decade, paving the way for prac...
Deep learning is experiencing a revolution with tremendous progress because of the availability of l...
Estimating material properties and modeling the appearance of an object under varying illumination c...
University of Technology Sydney. Faculty of Engineering and Information Technology.Enhancing image q...
Computer vision is a research field that aims to automate the procedure of gaining abstract understa...
Physics based vision attempts to model and invert light transport in order to extract information (s...
The work in this dissertation was done as a major shift in machine perception and deep learning rese...
Deep neural networks have achieved state-of-the-art performance for various machine learning tasks i...
Deep learning has exhibited remarkable performance on various computer vision tasks. However, these ...
This thesis explores the use of modern deep neural networks to learn visual concepts with fewer huma...
Over the last decade, deep learning methods have achieved success in diverse domains, becoming one o...
Deep learning has become the dominant approach in artificial intelligence to solve complex data-driv...
Deep Convolutional Neural Networks, which are a family of biologically inspired machine vision algor...
Georgoulis S., ''Extraction of surface characteristics and Lighting in 3D reconstruction from uncali...
The task of computer vision is to make computers understand the physical word through images. Lighti...
Deep learning has significantly advanced computer vision in the past decade, paving the way for prac...
Deep learning is experiencing a revolution with tremendous progress because of the availability of l...