Tensor Denoising via Amplification and Stable Rank Methods
- URL: http://arxiv.org/abs/2301.03761v1
- Date: Tue, 10 Jan 2023 02:46:09 GMT
- Title: Tensor Denoising via Amplification and Stable Rank Methods
- Authors: Jonathan Gryak, Kayvan Najarian, Harm Derksen
- Abstract summary: We adapt the previously developed framework of tensor amplification to denoising synthetic tensors of various sizes, ranks, and noise levels.
We also introduce denoising methods based on two variations of rank estimates called stable $X$-rank and stable slice rank.
The experimental results show that in the low rank context, tensor-based amplification provides comparable denoising performance in high signal-to-noise ratio settings.
- Score: 3.6107666045714533
- License: http://arxiv.org/licenses/nonexclusive-distrib/1.0/
- Abstract: Tensors in the form of multilinear arrays are ubiquitous in data science
applications. Captured real-world data, including video, hyperspectral images,
and discretized physical systems, naturally occur as tensors and often come
with attendant noise. Under the additive noise model and with the assumption
that the underlying clean tensor has low rank, many denoising methods have been
created that utilize tensor decomposition to effect denoising through low rank
tensor approximation. However, all such decomposition methods require
estimating the tensor rank, or related measures such as the tensor spectral and
nuclear norms, all of which are NP-hard problems.
In this work we adapt the previously developed framework of tensor
amplification, which provides good approximations of the spectral and nuclear
tensor norms, to denoising synthetic tensors of various sizes, ranks, and noise
levels, along with real-world tensors derived from physiological signals. We
also introduce denoising methods based on two variations of rank estimates
called stable $X$-rank and stable slice rank. The experimental results show
that in the low rank context, tensor-based amplification provides comparable
denoising performance in high signal-to-noise ratio (SNR) settings and superior
performance in noisy (i.e., low SNR) settings, while the stable $X$-rank method
achieves superior denoising performance on the physiological signal data.
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