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Discriminatively Boosted Image Clustering with Fully Convolutional Auto-Encoders
Fengfu Li; Hong Qiao; Bo Zhang; Xuanyang Xi

Abstract
Traditional image clustering methods take a two-step approach, feature learning and clustering, sequentially. However, recent research results demonstrated that combining the separated phases in a unified framework and training them jointly can achieve a better performance. In this paper, we first introduce fully convolutional auto-encoders for image feature learning and then propose a unified clustering framework to learn image representations and cluster centers jointly based on a fully convolutional auto-encoder and soft $k$-means scores. At initial stages of the learning procedure, the representations extracted from the auto-encoder may not be very discriminative for latter clustering. We address this issue by adopting a boosted discriminative distribution, where high score assignments are highlighted and low score ones are de-emphasized. With the gradually boosted discrimination, clustering assignment scores are discriminated and cluster purities are enlarged. Experiments on several vision benchmark datasets show that our methods can achieve a state-of-the-art performance.
Code Repositories
Benchmarks
| Benchmark | Methodology | Metrics |
|---|---|---|
| image-clustering-on-coil-100 | DBC | Accuracy: 0.775 NMI: 0.905 |
| image-clustering-on-coil-20 | DBC | Accuracy: 0.793 NMI: 0.895 |
| image-clustering-on-mnist-full | DBC | Accuracy: 0.976 NMI: 0.937 |
| image-clustering-on-usps | DBC | Accuracy: 0.743 NMI: 0.724 |
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