SA-Net: A deep spectral analysis network for image clustering
Jinghua Wang, Jianmin Jiang

TL;DR
SA-Net introduces a deep learning framework that extends spectral analysis for unsupervised image clustering, effectively learning deep representations and capturing local similarities to improve clustering performance.
Contribution
The paper proposes SA-Net, a novel deep spectral analysis network that integrates multiple spectral procedures for enhanced unsupervised image clustering.
Findings
Outperforms 11 benchmark methods on various datasets.
Effectively captures local patch-level similarities.
Achieves higher robustness against occlusions.
Abstract
Although supervised deep representation learning has attracted enormous attentions across areas of pattern recognition and computer vision, little progress has been made towards unsupervised deep representation learning for image clustering. In this paper, we propose a deep spectral analysis network for unsupervised representation learning and image clustering. While spectral analysis is established with solid theoretical foundations and has been widely applied to unsupervised data mining, its essential weakness lies in the fact that it is difficult to construct a proper affinity matrix and determine the involving Laplacian matrix for a given dataset. In this paper, we propose a SA-Net to overcome these weaknesses and achieve improved image clustering by extending the spectral analysis procedure into a deep learning framework with multiple layers. The SA-Net has the capability to learn…
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Taxonomy
TopicsAdvanced Image and Video Retrieval Techniques · Remote-Sensing Image Classification · Face and Expression Recognition
