Modern computer vision systems heavily rely on statistical machine learning models, which typically require large amounts of labeled data to be learned reliably. Moreover, very recently computer vision research widely adopted techniques for representation learning, which further increase the demand for labeled data. However, for many important practical problems there is relatively small amount of labeled data available, so it is problematic to leverage full potential of the representation learning methods. One way to overcome this obstacle is to invest substantial resources into producing large labelled datasets. Unfortunately, this can be prohibitively expensive in practice. In this thesis we focus on the alternative way of tackling the a...
We address the task of actively learning a seg-mentation system: given a large number of un-segmente...
Supervised learning, the standard paradigm in machine learning, only works well if a sufficiently la...
Recent years have seen a rapid growth in new approaches improving the accuracy of semantic segmentat...
Modern computer vision systems heavily rely on statistical machine learning models, which typically ...
Semantic segmentation is a pixel-wise classification task, which is to predict class label to every ...
A fundamental key-point for the recent success of deep learning models is the availability of large ...
The recent successes in computer vision have been mostly around using a huge corpus of intricately l...
A central challenge for the task of semantic segmentation is the prohibitive cost of obtaining dense...
Many scene understanding tasks are formulated as a labelling problem that tries to assign a label to...
In the age of big data and machine learning the costs to turn the data into fuel for the algorithms ...
Many scene understanding tasks are formulated as a labelling problem that tries to assign a label to...
Modern computer vision models mostly rely on massive human annotated datasets for supervised trainin...
This thesis presents a novel Weakly Supervised Mask Data Distillation technique, WeSuperMaDD, to gen...
This thesis aims at learning and predicting the fine-grained structure of visual object categories g...
A weakly supervised semantic segmentation (WSSS) method aims to learn a segmentation model from weak...
We address the task of actively learning a seg-mentation system: given a large number of un-segmente...
Supervised learning, the standard paradigm in machine learning, only works well if a sufficiently la...
Recent years have seen a rapid growth in new approaches improving the accuracy of semantic segmentat...
Modern computer vision systems heavily rely on statistical machine learning models, which typically ...
Semantic segmentation is a pixel-wise classification task, which is to predict class label to every ...
A fundamental key-point for the recent success of deep learning models is the availability of large ...
The recent successes in computer vision have been mostly around using a huge corpus of intricately l...
A central challenge for the task of semantic segmentation is the prohibitive cost of obtaining dense...
Many scene understanding tasks are formulated as a labelling problem that tries to assign a label to...
In the age of big data and machine learning the costs to turn the data into fuel for the algorithms ...
Many scene understanding tasks are formulated as a labelling problem that tries to assign a label to...
Modern computer vision models mostly rely on massive human annotated datasets for supervised trainin...
This thesis presents a novel Weakly Supervised Mask Data Distillation technique, WeSuperMaDD, to gen...
This thesis aims at learning and predicting the fine-grained structure of visual object categories g...
A weakly supervised semantic segmentation (WSSS) method aims to learn a segmentation model from weak...
We address the task of actively learning a seg-mentation system: given a large number of un-segmente...
Supervised learning, the standard paradigm in machine learning, only works well if a sufficiently la...
Recent years have seen a rapid growth in new approaches improving the accuracy of semantic segmentat...