This thesis investigates the possibility of efficiently adapting self-supervised representation learning on visual domains beyond natural scenes, e.g., medical imagining and non-RGB sensory images. The thesis contributes to i) formalizing the self-supervised representation learning paradigm in a unified conceptual framework and ii) proposing the hypothesis based on supervision signal from data, called data-prior. Method adaptations following the hypothesis demonstrate significant progress in downstream tasks performance on microscopic histopathology and 3-dimensional particle management (3DPM) mining material non-RGB image domains. Supervised learning has proven to be obtaining higher performance than unsupervised learning on computer visio...
The recent rise in machine learning has been largely made possible by novel algorithms, such as con...
Visual encoding models are important computational models for understanding how information is proce...
Deep networks are extremely adept at mapping a noisy, high-dimensional signal to a clean, low-dimens...
The complexity of any information processing task is highly dependent on the space where data is rep...
Although deep learning algorithms have achieved significant progress in a variety of domains, they r...
In general, large-scale annotated data are essential to training deep neural networks in order to ac...
Self-supervised methods gain more and more attention, especially in the medical domain, where the nu...
Self-supervised learning (SSL) aims at extracting from abundant unlabelled images transferable seman...
Self-supervised representation learning methods aim to provide powerful deep feature learning withou...
Recently introduced self-supervised methods for image representation learning provide on par or supe...
This work presents a novel self-supervised pre-training method to learn efficient representations wi...
Unsupervised learning has made substantial progress over the last few years, especially by means of ...
Self-supervised methods gain more and more attention, especially in the medical domain, where the nu...
The rise of deep learning has significantly advanced the field of computer vision. Deep learning, es...
Unsupervised learning has been a long-standing goal of machine learning and is especially important ...
The recent rise in machine learning has been largely made possible by novel algorithms, such as con...
Visual encoding models are important computational models for understanding how information is proce...
Deep networks are extremely adept at mapping a noisy, high-dimensional signal to a clean, low-dimens...
The complexity of any information processing task is highly dependent on the space where data is rep...
Although deep learning algorithms have achieved significant progress in a variety of domains, they r...
In general, large-scale annotated data are essential to training deep neural networks in order to ac...
Self-supervised methods gain more and more attention, especially in the medical domain, where the nu...
Self-supervised learning (SSL) aims at extracting from abundant unlabelled images transferable seman...
Self-supervised representation learning methods aim to provide powerful deep feature learning withou...
Recently introduced self-supervised methods for image representation learning provide on par or supe...
This work presents a novel self-supervised pre-training method to learn efficient representations wi...
Unsupervised learning has made substantial progress over the last few years, especially by means of ...
Self-supervised methods gain more and more attention, especially in the medical domain, where the nu...
The rise of deep learning has significantly advanced the field of computer vision. Deep learning, es...
Unsupervised learning has been a long-standing goal of machine learning and is especially important ...
The recent rise in machine learning has been largely made possible by novel algorithms, such as con...
Visual encoding models are important computational models for understanding how information is proce...
Deep networks are extremely adept at mapping a noisy, high-dimensional signal to a clean, low-dimens...