Remy Sun
Remy Sun
Home
Research
Publications
CV
Mixing Sample Data Augmentation
Semantic augmentation by mixing contents for semi-supervised learning
Leveraging unlabeled examples is a crucial issue for boosting performances in semi-supervised learning. In this work, we introduce the …
Remy Sun
,
Clément Masson
,
Gilles Hénaff
,
Nicolas Thome
,
Matthieu Cord
PDF
Cite
Project
Project
Reconciling feature sharing and multiple predictions with MIMO Vision Transformers
Multi-input multi-output training improves network performance by optimizing multiple subnetworks simultaneously. In this paper, we …
Remy Sun
,
Clément Masson
,
Nicolas Thome
,
Matthieu Cord
PDF
Cite
Project
Project
Swapping Semantic Contents for Mixing Images
Deep architecture have proven capable of solving many tasks provided a sufficient amount of labeled data. In fact, the amount of …
Remy Sun
,
Clément Masson
,
Gilles Hénaff
,
Nicolas Thome
,
Matthieu Cord
PDF
Cite
Project
Project
Adapting Multi-input Multi-output Schemes to Vision Transformers
Multi-input multi-output models have proven capable of providing ensembling for free in convolutional neural networks by training …
Remy Sun
,
Clément Masson
,
Nicolas Thome
,
Matthieu Cord
PDF
Cite
Project
Project
Towards Efficient Feature Sharing in MIMO Architectures
Multi-input multi-output architectures propose to train multiple subnetworks within one base network and then average the subnetwork …
Remy Sun
,
Alexandre Rame
,
Clément Masson
,
Nicolas Thome
,
Matthieu Cord
PDF
Cite
Project
MixMo Mixing Multiple Inputs for Multiple Outputs via Deep Subnetworks
Recent strategies achieved ensembling “for free” by fitting concurrently diverse subnetworks inside a single base network. …
Alexandre Rame
,
Remy Sun
,
Matthieu Cord
PDF
Cite
Code
Project
Project
Semantic augmentation by mixing contents for semi-supervised learning
Leveraging unlabeled examples is a crucial issue for boosting performances in semi-supervised learning. In this work, we introduce the …
Remy Sun
,
Clément Masson
,
Gilles Hénaff
,
Nicolas Thome
,
Matthieu Cord
PDF
Project
Cite
×