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Papers/Information Maximization Clustering via Multi-View Self-La...

Information Maximization Clustering via Multi-View Self-Labelling

Foivos Ntelemis, Yaochu Jin, Spencer A. Thomas

2021-03-12Image ClassificationSelf-Supervised LearningImage ClusteringClustering
PaperPDFCode(official)

Abstract

Image clustering is a particularly challenging computer vision task, which aims to generate annotations without human supervision. Recent advances focus on the use of self-supervised learning strategies in image clustering, by first learning valuable semantics and then clustering the image representations. These multiple-phase algorithms, however, increase the computational time and their final performance is reliant on the first stage. By extending the self-supervised approach, we propose a novel single-phase clustering method that simultaneously learns meaningful representations and assigns the corresponding annotations. This is achieved by integrating a discrete representation into the self-supervised paradigm through a classifier net. Specifically, the proposed clustering objective employs mutual information, and maximizes the dependency between the integrated discrete representation and a discrete probability distribution. The discrete probability distribution is derived though the self-supervised process by comparing the learnt latent representation with a set of trainable prototypes. To enhance the learning performance of the classifier, we jointly apply the mutual information across multi-crop views. Our empirical results show that the proposed framework outperforms state-of-the-art techniques with the average accuracy of 89.1% and 49.0%, respectively, on CIFAR-10 and CIFAR-100/20 datasets. Finally, the proposed method also demonstrates attractive robustness to parameter settings, making it ready to be applicable to other datasets.

Results

TaskDatasetMetricValueModel
Image ClusteringCIFAR-10ARI0.8IMC-SwAV (Best)
Image ClusteringCIFAR-10Accuracy0.897IMC-SwAV (Best)
Image ClusteringCIFAR-10NMI0.818IMC-SwAV (Best)
Image ClusteringCIFAR-10ARI0.79IMC-SwAV (Avg+-)
Image ClusteringCIFAR-10Accuracy0.891IMC-SwAV (Avg+-)
Image ClusteringCIFAR-10NMI0.811IMC-SwAV (Avg+-)
Image ClusteringTiny-ImageNetARI0.146IMC-SwAV (Best)
Image ClusteringTiny-ImageNetAccuracy0.282IMC-SwAV (Best)
Image ClusteringTiny-ImageNetNMI0.526IMC-SwAV (Best)
Image ClusteringTiny-ImageNetARI0.143IMC-SwAV (Avg+-)
Image ClusteringTiny-ImageNetAccuracy0.279IMC-SwAV (Avg+-)
Image ClusteringTiny-ImageNetNMI0.485IMC-SwAV (Avg+-)
Image ClusteringCIFAR-100ARI0.361IMC-SwAV (Best)
Image ClusteringCIFAR-100Accuracy0.519IMC-SwAV (Best)
Image ClusteringCIFAR-100NMI0.527IMC-SwAV (Best)
Image ClusteringCIFAR-100ARI0.337IMC-SwAV (Avg+-)
Image ClusteringCIFAR-100Accuracy0.49IMC-SwAV (Avg+-)
Image ClusteringCIFAR-100NMI0.503IMC-SwAV (Avg+-)
Image ClusteringSTL-10ARI0.716IMC-SwAV (Best)
Image ClusteringSTL-10Accuracy0.853IMC-SwAV (Best)
Image ClusteringSTL-10NMI0.747IMC-SwAV (Best)
Image ClusteringSTL-10ARI0.685IMC-SwAV (Avg+-)
Image ClusteringSTL-10Accuracy0.831IMC-SwAV (Avg+-)
Image ClusteringSTL-10NMI0.729IMC-SwAV (Avg+-)

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