Depth maps acquired with ToF cameras have a limited accuracy due to the high noise level and to the multi-path interference. Deep networks can be used for refining ToF depth, but their training requires real world acquisitions with ground truth, which is complex and expensive to collect. A possible workaround is to train networks on synthetic data, but the domain shift between the real and synthetic data reduces the performances. In this paper, we propose three approaches to perform unsupervised domain adaptation of a depth denoising network from synthetic to real data. These approaches are respectively acting at the input, at the feature and at the output level of the network. The first approach uses domain translation networks to transfor...
Under-display imaging has recently received considerable attention in both academia and industry. As...
Recent studies reveal that a deep neural network can learn transferable features which generalize we...
Depth perception is considered an invaluable source of information for various vision tasks. However...
Depth maps acquired with ToF cameras have a limited accuracy due to the high noise level and to the ...
Time-of-Flight data is typically affected by a high level of noise and by artifacts due to Multi-Pat...
State-of-the-art methods to infer dense and accurate depth measurements from images rely on deep CNN...
Current methods for single-image depth estimation use training datasets with real image-depth pairs ...
Advances in depth sensing technologies have allowed simultaneous acquisition of both color and depth...
The removal of Multi-Path Interference (MPI) is one of the major open challenges in depth estimation...
The scene depth is an important information that can be used to retrieve the scene geometry, a missi...
In this thesis, we propose a novel unsupervised clean-noisy datasets adaptation algorithm based on s...
We propose a generic depth-refinement scheme based on GeoNet, a recent deep-learning approach for pr...
Universal domain adaptation (UDA) is a crucial research topic for efficient deep learning model trai...
We present VoloGAN, an adversarial domain adaptation network that translates synthetic RGB-D images ...
Recently, various Deepfake detection methods have been proposed, and most of them are based on convo...
Under-display imaging has recently received considerable attention in both academia and industry. As...
Recent studies reveal that a deep neural network can learn transferable features which generalize we...
Depth perception is considered an invaluable source of information for various vision tasks. However...
Depth maps acquired with ToF cameras have a limited accuracy due to the high noise level and to the ...
Time-of-Flight data is typically affected by a high level of noise and by artifacts due to Multi-Pat...
State-of-the-art methods to infer dense and accurate depth measurements from images rely on deep CNN...
Current methods for single-image depth estimation use training datasets with real image-depth pairs ...
Advances in depth sensing technologies have allowed simultaneous acquisition of both color and depth...
The removal of Multi-Path Interference (MPI) is one of the major open challenges in depth estimation...
The scene depth is an important information that can be used to retrieve the scene geometry, a missi...
In this thesis, we propose a novel unsupervised clean-noisy datasets adaptation algorithm based on s...
We propose a generic depth-refinement scheme based on GeoNet, a recent deep-learning approach for pr...
Universal domain adaptation (UDA) is a crucial research topic for efficient deep learning model trai...
We present VoloGAN, an adversarial domain adaptation network that translates synthetic RGB-D images ...
Recently, various Deepfake detection methods have been proposed, and most of them are based on convo...
Under-display imaging has recently received considerable attention in both academia and industry. As...
Recent studies reveal that a deep neural network can learn transferable features which generalize we...
Depth perception is considered an invaluable source of information for various vision tasks. However...