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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 110 of 110 papers

TitleStatusHype
Stabilize the Latent Space for Image Autoregressive Modeling: A Unified PerspectiveCode2
SynCo: Synthetic Hard Negatives in Contrastive Learning for Better Unsupervised Visual RepresentationsCode0
Unsupervised Representation Learning by Balanced Self Attention MatchingCode0
Multi-label Cluster Discrimination for Visual Representation LearningCode4
Estimating Physical Information Consistency of Channel Data Augmentation for Remote Sensing Images0
IPCL: Iterative Pseudo-Supervised Contrastive Learning to Improve Self-Supervised Feature RepresentationCode0
MIM-Refiner: A Contrastive Learning Boost from Intermediate Pre-Trained RepresentationsCode1
Perceptual Group Tokenizer: Building Perception with Iterative Grouping0
Vision Transformers Need RegistersCode6
Masked Image Residual Learning for Scaling Deeper Vision TransformersCode0
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