Subspace Clustering in Wavelet Packets Domain
Ivica Kopriva, Damir Sersic

TL;DR
This paper introduces a wavelet packet domain approach to subspace clustering that enhances noise robustness and improves performance, matching or surpassing deep learning methods on image datasets.
Contribution
It proposes a novel wavelet packet-based transform domain subspace clustering method with two approaches, including a MERA tensor network formulation and a subband selection technique, improving clustering accuracy.
Findings
Achieved 87.45% accuracy on COIL100 dataset.
Outperformed deep SC algorithms by 14.75% in accuracy.
Matched or exceeded performance of some deep learning SC methods.
Abstract
Subspace clustering (SC) algorithms utilize the union of subspaces model to cluster data points according to the subspaces from which they are drawn. To better address separability of subspaces and robustness to noise we propose a wavelet packet (WP) based transform domain subspace clustering. Depending on the number of resolution levels, WP yields several representations instantiated in terms of subbands. The first approach combines original and subband data into one complementary multi-view representation. Afterward, we formulate joint representation learning as a low-rank MERA tensor network approximation problem. That is motivated by the strong representation power of the MERA network to capture complex intra/inter-view dependencies in corresponding self-representation tensor. In the second approach, we use a self-stopping computationally efficient method to select the subband with…
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Taxonomy
TopicsAdvanced Data Compression Techniques
