The resurgence of unsupervised learning can be attributed to the remarkable progress of self-supervised learning, which includes generative $(\mathcal{G})$ and discriminative $(\mathcal{D})$ models. In computer vision, the mainstream self-supervised learning algorithms are $\mathcal{D}$ models. However, designing a $\mathcal{D}$ model could be over-complicated; also, some studies hinted that a $\mathcal{D}$ model might not be as general and interpretable as a $\mathcal{G}$ model. In this paper, we switch from $\mathcal{D}$ models to $\mathcal{G}$ models using the classical auto-encoder $(AE)$ . Note that a vanilla $\mathcal{G}$ model was far less efficient than a $\mathcal{D}$ model in self-supervised computer vision tasks, as it wastes mod...
Les humains et de nombreux animaux peuvent voir le monde et le comprendre sans effort, ce qui laisse...
Self-supervision can dramatically cut back the amount of manually-labeled data required to train dee...
Deep learning has made great progress in solving many computer vision tasks for which labeled data i...
The complexity of any information processing task is highly dependent on the space where data is rep...
Recently introduced self-supervised methods for image representation learning provide on par or supe...
Self-supervised learning (SSL) aims at extracting from abundant unlabelled images transferable seman...
Computers represent images with pixels and each pixel contains three numbers for red, green and blue...
This thesis explores how a computer can learn the structure of visual objects in the absence of stro...
In contrastive self-supervised learning, the common way to learn discriminative representation is to...
International audienceIn this work we introduce Lifting Autoencoders, a generative 3D surface-based...
International audienceIn this work we introduce Lifting Autoencoders, a generative 3D surface-based...
International audienceIn this work we introduce Lifting Autoencoders, a generative 3D surface-based...
Learning visual representations plays an important role in computer vision and machine learning appl...
Self-supervision can dramatically cut back the amount of manually-labeled data required to train dee...
Self-supervision can dramatically cut back the amount of manually-labelled data required to train de...
Les humains et de nombreux animaux peuvent voir le monde et le comprendre sans effort, ce qui laisse...
Self-supervision can dramatically cut back the amount of manually-labeled data required to train dee...
Deep learning has made great progress in solving many computer vision tasks for which labeled data i...
The complexity of any information processing task is highly dependent on the space where data is rep...
Recently introduced self-supervised methods for image representation learning provide on par or supe...
Self-supervised learning (SSL) aims at extracting from abundant unlabelled images transferable seman...
Computers represent images with pixels and each pixel contains three numbers for red, green and blue...
This thesis explores how a computer can learn the structure of visual objects in the absence of stro...
In contrastive self-supervised learning, the common way to learn discriminative representation is to...
International audienceIn this work we introduce Lifting Autoencoders, a generative 3D surface-based...
International audienceIn this work we introduce Lifting Autoencoders, a generative 3D surface-based...
International audienceIn this work we introduce Lifting Autoencoders, a generative 3D surface-based...
Learning visual representations plays an important role in computer vision and machine learning appl...
Self-supervision can dramatically cut back the amount of manually-labeled data required to train dee...
Self-supervision can dramatically cut back the amount of manually-labelled data required to train de...
Les humains et de nombreux animaux peuvent voir le monde et le comprendre sans effort, ce qui laisse...
Self-supervision can dramatically cut back the amount of manually-labeled data required to train dee...
Deep learning has made great progress in solving many computer vision tasks for which labeled data i...