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Self-Supervised Image Classification

This is the task of image classification using representations learnt with self-supervised learning. Self-supervised methods generally involve a pretext task that is solved to learn a good representation and a loss function to learn with. One example of a loss function is an autoencoder based loss where the goal is reconstruction of an image pixel-by-pixel. A more popular recent example is a contrastive loss, which measure the similarity of sample pairs in a representation space, and where there can be a varying target instead of a fixed target to reconstruct (as in the case of autoencoders).

A common evaluation protocol is to train a linear classifier on top of (frozen) representations learnt by self-supervised methods. The leaderboards for the linear evaluation protocol can be found below. In practice, it is more common to fine-tune features on a downstream task. An alternative evaluation protocol therefore uses semi-supervised learning and finetunes on a % of the labels. The leaderboards for the finetuning protocol can be accessed here.

You may want to read some blog posts before reading the papers and checking the leaderboards:

There is also Yann LeCun's talk at AAAI-20 which you can watch here (35:00+).

( Image credit: A Simple Framework for Contrastive Learning of Visual Representations )

Papers

Showing 91100 of 110 papers

TitleStatusHype
With a Little Help from My Friends: Nearest-Neighbor Contrastive Learning of Visual RepresentationsCode0
Self-supervised Pretraining of Visual Features in the Wild0
Self-supervised Pre-training with Hard Examples Improves Visual Representations0
A Pseudo-labelling Auto-Encoder for unsupervised image classification0
Seed the Views: Hierarchical Semantic Alignment for Contrastive Representation Learning0
A comparative study of semi- and self-supervised semantic segmentation of biomedical microscopy data0
Consensus Clustering With Unsupervised Representation Learning0
What Makes for Good Views for Contrastive Learning?0
On Mutual Information Maximization for Representation LearningCode0
Learning Representations by Maximizing Mutual Information Across ViewsCode0
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