Self-supervised learning methods have shown impressive results in downstream classification tasks. However, there is limited work in understanding and interpreting their learned representations. In this paper, we study the representation space of several state-of-the-art self-supervised models including SimCLR, SwaV, MoCo V2 and BYOL. Without the use of class label information, we first discover discriminative features that are highly active for various subsets of samples and correspond to unique physical attributes in images. We show that, using such discriminative features, one can compress the representation space of self-supervised models up to 50% without affecting downstream linear classification significantly. Next, we propose a samp...
Although deep learning algorithms have achieved significant progress in a variety of domains, they r...
Recent advancements in self-supervised learning (SSL) made it possible to learn generalizable visual...
With the rapid advancement of deep learning techniques in computer vision, researchers have achieved...
Self-supervised representation learning methods aim to provide powerful deep feature learning withou...
Self-supervised learning (SSL) is a scalable way to learn general visual representations since it le...
Self-supervised learning (SSL) aims at extracting from abundant unlabelled images transferable seman...
Recent approaches in self-supervised learning of image representations can be categorized into diffe...
Non-contrastive methods of self-supervised learning (such as BYOL and SimSiam) learn representations...
Recent approaches in self-supervised learning of image representations can be categorized into diffe...
Recent approaches in self-supervised learning of image representations can be categorized into diffe...
The complexity of any information processing task is highly dependent on the space where data is rep...
Self-supervised visual representation learning has recently attracted significant research interest....
Self-supervised visual representation learning has recently attracted significant research interest....
International audienceRecent approaches in self-supervised learning of image representations can be ...
In general, large-scale annotated data are essential to training deep neural networks in order to ac...
Although deep learning algorithms have achieved significant progress in a variety of domains, they r...
Recent advancements in self-supervised learning (SSL) made it possible to learn generalizable visual...
With the rapid advancement of deep learning techniques in computer vision, researchers have achieved...
Self-supervised representation learning methods aim to provide powerful deep feature learning withou...
Self-supervised learning (SSL) is a scalable way to learn general visual representations since it le...
Self-supervised learning (SSL) aims at extracting from abundant unlabelled images transferable seman...
Recent approaches in self-supervised learning of image representations can be categorized into diffe...
Non-contrastive methods of self-supervised learning (such as BYOL and SimSiam) learn representations...
Recent approaches in self-supervised learning of image representations can be categorized into diffe...
Recent approaches in self-supervised learning of image representations can be categorized into diffe...
The complexity of any information processing task is highly dependent on the space where data is rep...
Self-supervised visual representation learning has recently attracted significant research interest....
Self-supervised visual representation learning has recently attracted significant research interest....
International audienceRecent approaches in self-supervised learning of image representations can be ...
In general, large-scale annotated data are essential to training deep neural networks in order to ac...
Although deep learning algorithms have achieved significant progress in a variety of domains, they r...
Recent advancements in self-supervised learning (SSL) made it possible to learn generalizable visual...
With the rapid advancement of deep learning techniques in computer vision, researchers have achieved...