Robust deep image clustering using convolutional autoencoder with separable discrete Krawtchouk and Hahn orthogonal moments
By cooperatively learning features and assigning clusters, deep clustering is superior to conventional clustering algorithms. Numerous deep clustering algorithms have been developed for a variety of application levels; however, the majority are still incapable of learning robust noise-resistant late...
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| Vydáno v: | Intelligent systems with applications Ročník 22; s. 200387 |
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| Hlavní autoři: | , , , |
| Médium: | Journal Article |
| Jazyk: | angličtina |
| Vydáno: |
Elsevier Ltd
01.06.2024
Elsevier |
| Témata: | |
| ISSN: | 2667-3053, 2667-3053 |
| On-line přístup: | Získat plný text |
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| Shrnutí: | By cooperatively learning features and assigning clusters, deep clustering is superior to conventional clustering algorithms. Numerous deep clustering algorithms have been developed for a variety of application levels; however, the majority are still incapable of learning robust noise-resistant latent features, which limits the clustering performance. To address this open research challenge, we introduce, for the first time, a new approach called: Robust Deep Embedded Image Clustering algorithm with Separable Krawtchouk and Hahn Moments (RDEICSKHM). Our approach leverages the advantages of Krawtchouk and Hahn moments, such as local feature extraction, discrete orthogonality, and noise tolerance, to obtain a meaningful and robust image representation. Moreover, we employ LayerNormalization to further improve the latent space quality and facilitate the clustering process. We evaluate our approach on four image datasets: MNIST, MNIST-test, USPS, and Fashion-MNIST. We compare our method with several deep clustering methods based on two metrics: clustering accuracy (ACC) and normalized mutual information (NMI). The experimental results show that our method achieves superior or competitive performance on all datasets, demonstrating its effectiveness and robustness for deep image clustering.
•Integration of discrete separable moments into autoencoder architectures.•Incorporation of the “LayerNormalization” layer for improvement DEC-based models.•Creating a robust convolutional model “RDEICSKHM” using discrete separable moments. |
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| ISSN: | 2667-3053 2667-3053 |
| DOI: | 10.1016/j.iswa.2024.200387 |