Image Clustering On Cifar 100

评估指标

ARI
Accuracy
NMI
Train Set

评测结果

各个模型在此基准测试上的表现结果

Paper TitleRepository
TURTLE (CLIP + DINOv2)0.8340.8980.915-Let Go of Your Labels with Unsupervised Transfer
PRCut (DinoV2)-0.7890.856-Deep Clustering via Probabilistic Ratio-Cut Optimization-
PRO-DSC-0.7730.824-Exploring a Principled Framework For Deep Subspace Clustering-
TEMI CLIP ViT-L (openai)0.6120.7370.799TrainExploring the Limits of Deep Image Clustering using Pretrained Models
TEMI DINO ViT-B0.5330.6710.769TrainExploring the Limits of Deep Image Clustering using Pretrained Models
ITAE0.50530.65020.771TestImproving Image Clustering with Artifacts Attenuation via Inference-Time Attention Engineering-
SPICE*0.4220.5840.583TrainSPICE: Semantic Pseudo-labeling for Image Clustering
HUME0.3770.555-Train--
DPAC0.3930.5550.542-Deep Online Probability Aggregation Clustering
SPICE-BPA0.4020.5500.560-The Balanced-Pairwise-Affinities Feature Transform
TCL0.3570.5310.529TrainTwin Contrastive Learning for Online Clustering
IMC-SwAV (Best)0.3610.5190.527TrainInformation Maximization Clustering via Multi-View Self-Labelling
SCAN0.3330.5070.486TrainSCAN: Learning to Classify Images without Labels
IMC-SwAV (Avg+-)0.3370.490.503-Information Maximization Clustering via Multi-View Self-Labelling
ConCURL0.3030.4790.468TrainRepresentation Learning for Clustering via Building Consensus
SCAN (Avg)0.3010.4590.468TrainSCAN: Learning to Classify Images without Labels
C30.2750.4510.434-C3: Cross-instance guided Contrastive Clustering
MMDC-0.4460.418-Multi-Modal Deep Clustering: Unsupervised Partitioning of Images
CoHiClust0.2990.4370.467-Contrastive Hierarchical Clustering
CC0.2660.4290.431-Contrastive Clustering
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Image Clustering On Cifar 100 | SOTA | HyperAI超神经