Unsupervised Image Classification with Adaptive Nearest Neighbor Selection and Cluster Ensembles
- URL: http://arxiv.org/abs/2511.16213v1
- Date: Thu, 20 Nov 2025 10:34:56 GMT
- Title: Unsupervised Image Classification with Adaptive Nearest Neighbor Selection and Cluster Ensembles
- Authors: Melih Baydar, Emre Akbas,
- Abstract summary: Unsupervised image classification aims to group unlabeled images into meaningful categories.<n>ICCE is the first fully unsupervised image classification method to exceed 70% accuracy on ImageNet.<n>ICCE achieves state-of-the-art performance on ten image classification benchmarks, achieving 99.3% accuracy on CIFAR10, 89% on CIFAR100, and 70.4% on ImageNet datasets.
- Score: 9.338965648455238
- License: http://arxiv.org/licenses/nonexclusive-distrib/1.0/
- Abstract: Unsupervised image classification, or image clustering, aims to group unlabeled images into semantically meaningful categories. Early methods integrated representation learning and clustering within an iterative framework. However, the rise of foundational models have recently shifted focus solely to clustering, bypassing the representation learning step. In this work, we build upon a recent multi-head clustering approach by introducing adaptive nearest neighbor selection and cluster ensembling strategies to improve clustering performance. Our method, "Image Clustering through Cluster Ensembles" (ICCE), begins with a clustering stage, where we train multiple clustering heads on a frozen backbone, producing diverse image clusterings. We then employ a cluster ensembling technique to consolidate these potentially conflicting results into a unified consensus clustering. Finally, we train an image classifier using the consensus clustering result as pseudo-labels. ICCE achieves state-of-the-art performance on ten image classification benchmarks, achieving 99.3% accuracy on CIFAR10, 89% on CIFAR100, and 70.4% on ImageNet datasets, narrowing the performance gap with supervised methods. To the best of our knowledge, ICCE is the first fully unsupervised image classification method to exceed 70% accuracy on ImageNet.
Related papers
- An Adaptor for Triggering Semi-Supervised Learning to Out-of-Box Serve Deep Image Clustering [52.15903983661315]
ASD is an adaptor that enables the cold-start of SSL learners for deep image clustering without any prerequisites.<n>We show the superior performance of ASD across various benchmarks against the latest deep image clustering approaches.
arXiv Detail & Related papers (2025-09-25T10:21:01Z) - Self-Enhanced Image Clustering with Cross-Modal Semantic Consistency [57.961869351897384]
We propose a framework based on cross-modal semantic consistency for efficient image clustering.<n>Our framework first builds a strong foundation via Cross-Modal Semantic Consistency.<n>In the first stage, we train lightweight clustering heads to align with the rich semantics of the pre-trained model.<n>In the second stage, we introduce a Self-Enhanced fine-tuning strategy.
arXiv Detail & Related papers (2025-08-02T08:12:57Z) - Utilization of Neighbor Information for Image Classification with Different Levels of Supervision [38.350123625613804]
We propose a flexible method that performs well for both generalized category discovery (GCD) and image clustering.<n>Our method yields state-of-the-art results for both clustering (+3% ImageNet-100, Imagenet200) and GCD (+0.8% ImageNet-100, +5% CUB, +2% SCars, +4% Aircraft)
arXiv Detail & Related papers (2025-03-18T17:59:41Z) - Image Clustering Algorithm Based on Self-Supervised Pretrained Models and Latent Feature Distribution Optimization [4.39139858370436]
This paper introduces an image clustering algorithm based on self-supervised pretrained models and latent feature distribution optimization.
Our approach outperforms the latest clustering algorithms and achieves state-of-the-art clustering results.
arXiv Detail & Related papers (2024-08-04T04:08:21Z) - Rethinking cluster-conditioned diffusion models for label-free image synthesis [1.4624458429745086]
Diffusion-based image generation models can enhance image quality when conditioned on ground truth labels.
We investigate how individual clustering determinants, such as the number of clusters and the clustering method, impact image synthesis.
arXiv Detail & Related papers (2024-03-01T14:47:46Z) - Image Clustering with External Guidance [33.664812922814754]
The core of clustering is incorporating prior knowledge to construct supervision signals.
We propose leveraging external knowledge as a new supervision signal to guide clustering, even though it seems irrelevant to the given data.
arXiv Detail & Related papers (2023-10-18T14:20:55Z) - Reinforcement Graph Clustering with Unknown Cluster Number [91.4861135742095]
We propose a new deep graph clustering method termed Reinforcement Graph Clustering.
In our proposed method, cluster number determination and unsupervised representation learning are unified into a uniform framework.
In order to conduct feedback actions, the clustering-oriented reward function is proposed to enhance the cohesion of the same clusters and separate the different clusters.
arXiv Detail & Related papers (2023-08-13T18:12:28Z) - DeepCut: Unsupervised Segmentation using Graph Neural Networks
Clustering [6.447863458841379]
This study introduces a lightweight Graph Neural Network (GNN) to replace classical clustering methods.
Unlike existing methods, our GNN takes both the pair-wise affinities between local image features and the raw features as input.
We demonstrate how classical clustering objectives can be formulated as self-supervised loss functions for training an image segmentation GNN.
arXiv Detail & Related papers (2022-12-12T12:31:46Z) - C3: Cross-instance guided Contrastive Clustering [8.953252452851862]
Clustering is the task of gathering similar data samples into clusters without using any predefined labels.
We propose a novel contrastive clustering method, Cross-instance guided Contrastive Clustering (C3)
Our proposed method can outperform state-of-the-art algorithms on benchmark computer vision datasets.
arXiv Detail & Related papers (2022-11-14T06:28:07Z) - Learning Hierarchical Graph Neural Networks for Image Clustering [81.5841862489509]
We propose a hierarchical graph neural network (GNN) model that learns how to cluster a set of images into an unknown number of identities.
Our hierarchical GNN uses a novel approach to merge connected components predicted at each level of the hierarchy to form a new graph at the next level.
arXiv Detail & Related papers (2021-07-03T01:28:42Z) - You Never Cluster Alone [150.94921340034688]
We extend the mainstream contrastive learning paradigm to a cluster-level scheme, where all the data subjected to the same cluster contribute to a unified representation.
We define a set of categorical variables as clustering assignment confidence, which links the instance-level learning track with the cluster-level one.
By reparametrizing the assignment variables, TCC is trained end-to-end, requiring no alternating steps.
arXiv Detail & Related papers (2021-06-03T14:59:59Z) - Graph Contrastive Clustering [131.67881457114316]
We propose a novel graph contrastive learning framework, which is then applied to the clustering task and we come up with the Graph Constrastive Clustering(GCC) method.
Specifically, on the one hand, the graph Laplacian based contrastive loss is proposed to learn more discriminative and clustering-friendly features.
On the other hand, a novel graph-based contrastive learning strategy is proposed to learn more compact clustering assignments.
arXiv Detail & Related papers (2021-04-03T15:32:49Z)
This list is automatically generated from the titles and abstracts of the papers in this site.
This site does not guarantee the quality of this site (including all information) and is not responsible for any consequences.