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Contrastive Mean-Shift Learning for Generalized Category Discovery

About

We address the problem of generalized category discovery (GCD) that aims to partition a partially labeled collection of images; only a small part of the collection is labeled and the total number of target classes is unknown. To address this generalized image clustering problem, we revisit the mean-shift algorithm, i.e., a classic, powerful technique for mode seeking, and incorporate it into a contrastive learning framework. The proposed method, dubbed Contrastive Mean-Shift (CMS) learning, trains an image encoder to produce representations with better clustering properties by an iterative process of mean shift and contrastive update. Experiments demonstrate that our method, both in settings with and without the total number of clusters being known, achieves state-of-the-art performance on six public GCD benchmarks without bells and whistles.

Sua Choi, Dahyun Kang, Minsu Cho• 2024

Related benchmarks

TaskDatasetResultRank
Generalized Category DiscoveryImageNet-100
All Accuracy85.9
208
Generalized Category DiscoveryCIFAR-100
Accuracy (All)84.2
185
Generalized Category DiscoveryStanford Cars
Accuracy (All)77.9
160
Generalized Category DiscoveryCUB
Accuracy (All)68.2
133
Generalized Category DiscoveryFGVC Aircraft
Accuracy (All)56
105
Generalized Category DiscoveryHerbarium19
Score (All Categories)39.7
71
Generalized Category DiscoveryCUB-200 (test)
Overall Accuracy68.2
63
Generalized Category DiscoveryAircraft (test)
Accuracy (All)56
38
Fine-grained object category discoveryStanford Cars (test)
Accuracy56.9
38
Generalized Category DiscoveryHerbarium19 (test)
Score (All Categories)36.4
37
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