SOTAVerified

Self-Supervised Learning

Self-Supervised Learning is proposed for utilizing unlabeled data with the success of supervised learning. Producing a dataset with good labels is expensive, while unlabeled data is being generated all the time. The motivation of Self-Supervised Learning is to make use of the large amount of unlabeled data. The main idea of Self-Supervised Learning is to generate the labels from unlabeled data, according to the structure or characteristics of the data itself, and then train on this unsupervised data in a supervised manner. Self-Supervised Learning is wildly used in representation learning to make a model learn the latent features of the data. This technique is often employed in computer vision, video processing and robot control.

Source: Self-supervised Point Set Local Descriptors for Point Cloud Registration

Image source: LeCun

Papers

Showing 49514975 of 5044 papers

TitleStatusHype
Information Competing Process for Learning Diversified RepresentationsCode0
Learning Representations by Maximizing Mutual Information Across ViewsCode0
Self-Supervised Representation Learning From Videos for Facial Action Unit DetectionCode0
Self-Supervised Representation Learning by Rotation Feature DecouplingCode0
Multi-Task Self-Supervised Object Detection via Recycling of Bounding Box Annotations0
Putting An End to End-to-End: Gradient-Isolated Learning of RepresentationsCode0
Self-supervised audio representation learning for mobile devices0
How to learn from unlabeled volume data: Self-Supervised 3D Context Feature Learning0
Self-supervised learning of inverse problem solvers in medical imaging0
Semi-Supervised Learning with Scarce AnnotationsCode0
Self-Supervised Similarity Learning for Digital Pathology0
An Improved Self-supervised GAN via Adversarial Training0
Learning by Inertia: Self-supervised Monocular Visual Odometry for Road Vehicles0
Scaling and Benchmarking Self-Supervised Visual Representation LearningCode0
Self-supervised Learning for Video Correspondence FlowCode0
Object-Oriented Model Learning through Multi-Level Abstraction0
A Model Cortical Network for Spatiotemporal Sequence Learning and Prediction0
DynamoNet: Dynamic Action and Motion Network0
SelFlow: Self-Supervised Learning of Optical FlowCode0
What I See Is What You See: Joint Attention Learning for First and Third Person Video Co-analysis0
Suction Grasp Region Prediction using Self-supervised Learning for Object Picking in Dense Clutter0
Temporal Cycle-Consistency LearningCode0
Object-Oriented Dynamics Learning through Multi-Level AbstractionCode0
Improvisation through Physical Understanding: Using Novel Objects as Tools with Visual Foresight0
Knowledge Distillation for Human Action Anticipation0
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Benchmark Results

#ModelMetricClaimedVerifiedStatus
1Pretraining: NoneImages & Text57.5Unverified
2Pretraining: ShEDImages & Text54.3Unverified
3Pretraining: e-MixImages & Text48.9Unverified
#ModelMetricClaimedVerifiedStatus
1ResNet50Accuracy91.7Unverified
2ResNet18Accuracy91.02Unverified
3MV-MRAccuracy89.67Unverified
#ModelMetricClaimedVerifiedStatus
1ResNet50average top-1 classification accuracy93.89Unverified
2ResNet18average top-1 classification accuracy92.58Unverified
#ModelMetricClaimedVerifiedStatus
1ResNet50average top-1 classification accuracy72.51Unverified
2ResNet18average top-1 classification accuracy69.31Unverified
#ModelMetricClaimedVerifiedStatus
1CorInfomax (ResNet50)Top-1 Accuracy82.64Unverified
2CorInfomax (ResNet18)Top-1 Accuracy80.48Unverified
#ModelMetricClaimedVerifiedStatus
1ResNet50average top-1 classification accuracy51.84Unverified
2ResNet18average top-1 classification accuracy51.67Unverified
#ModelMetricClaimedVerifiedStatus
1CorInfomax (ResNet18)Top-1 Accuracy93.18Unverified
#ModelMetricClaimedVerifiedStatus
1CorInfomax (ResNet18)Top-1 Accuracy71.61Unverified
#ModelMetricClaimedVerifiedStatus
1Hybrid BYOL-S/CvTAccuracy67.2Unverified
#ModelMetricClaimedVerifiedStatus
1CorInfomax (ResNet50)Top-1 Accuracy54.86Unverified