CVSep 11, 2020

Spectral Analysis Network for Deep Representation Learning and Image Clustering

arXiv:2009.05235v1
Originality Incremental advance
AI Analysis

This addresses the need for unsupervised techniques in multimedia analysis where labeled data is scarce or costly, offering an incremental improvement over existing spectral methods.

The paper tackles unsupervised deep representation learning for image clustering by proposing a spectral analysis network that learns clustering-friendly representations, achieving effectiveness across various image clustering tasks.

Deep representation learning is a crucial procedure in multimedia analysis and attracts increasing attention. Most of the popular techniques rely on convolutional neural network and require a large amount of labeled data in the training procedure. However, it is time consuming or even impossible to obtain the label information in some tasks due to cost limitation. Thus, it is necessary to develop unsupervised deep representation learning techniques. This paper proposes a new network structure for unsupervised deep representation learning based on spectral analysis, which is a popular technique with solid theory foundations. Compared with the existing spectral analysis methods, the proposed network structure has at least three advantages. Firstly, it can identify the local similarities among images in patch level and thus more robust against occlusion. Secondly, through multiple consecutive spectral analysis procedures, the proposed network can learn more clustering-friendly representations and is capable to reveal the deep correlations among data samples. Thirdly, it can elegantly integrate different spectral analysis procedures, so that each spectral analysis procedure can have their individual strengths in dealing with different data sample distributions. Extensive experimental results show the effectiveness of the proposed methods on various image clustering tasks.

Foundations

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