In contrastive self-supervised learning, the common way to learn discriminative representation is to pull different augmented "views" of the same image closer while pushing all other images further apart, which has been proven to be effective. However, it is unavoidable to construct undesirable views containing different semantic concepts during the augmentation procedure. It would damage the semantic consistency of representation to pull these augmentations closer in the feature space indiscriminately. In this study, we introduce feature-level augmentation and propose a novel semantics-consistent feature search (SCFS) method to mitigate this negative effect. The main idea of SCFS is to adaptively search semantics-consistent features to enh...
The complexity of any information processing task is highly dependent on the space where data is rep...
To improve performance in visual feature representation from photos or videos for practical applicat...
We present an approach to contrastive representation learning for semantic segmentation. Our approac...
To deal with the exhausting annotations, self-supervised representation learning from unlabeled poin...
To deal with the exhausting annotations, self-supervised representation learning from unlabeled poin...
Recent progress in contrastive learning has revolutionized unsupervised representation learn...
The resurgence of unsupervised learning can be attributed to the remarkable progress of self-supervi...
Multiview self-supervised representation learning roots in exploring semantic consistency across dat...
In this paper, we tackle the problem of learning visual representations from unlabeled scene-centric...
Recently, self-supervised learning has attracted great attention, since it only requires unlabeled d...
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...
State-of-the-art frameworks in self-supervised learning have recently shown that fully utilizing tra...
Self-supervised contrastive learning has demonstrated great potential in learning visual representat...
To deal with the exhausting annotations, self-supervised representation learning from unlabeled poin...
The complexity of any information processing task is highly dependent on the space where data is rep...
To improve performance in visual feature representation from photos or videos for practical applicat...
We present an approach to contrastive representation learning for semantic segmentation. Our approac...
To deal with the exhausting annotations, self-supervised representation learning from unlabeled poin...
To deal with the exhausting annotations, self-supervised representation learning from unlabeled poin...
Recent progress in contrastive learning has revolutionized unsupervised representation learn...
The resurgence of unsupervised learning can be attributed to the remarkable progress of self-supervi...
Multiview self-supervised representation learning roots in exploring semantic consistency across dat...
In this paper, we tackle the problem of learning visual representations from unlabeled scene-centric...
Recently, self-supervised learning has attracted great attention, since it only requires unlabeled d...
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...
State-of-the-art frameworks in self-supervised learning have recently shown that fully utilizing tra...
Self-supervised contrastive learning has demonstrated great potential in learning visual representat...
To deal with the exhausting annotations, self-supervised representation learning from unlabeled poin...
The complexity of any information processing task is highly dependent on the space where data is rep...
To improve performance in visual feature representation from photos or videos for practical applicat...
We present an approach to contrastive representation learning for semantic segmentation. Our approac...