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.
翻译:以多线性阵列为形式的电线阵列,在数据科学应用中无处不在。 捕获的真实世界数据,包括视频、超光谱图像和离散物理系统,自然会以高压形式出现,而且往往会随之产生噪音。 在添加噪音模型下,并假设深层清洁高压的等级较低,许多分解方法已经形成,利用高压分解法,通过低等级的高压近距离进行分解。然而,所有此类分解方法都需要估算高压等级,或相关措施,如高压光谱和核规范,所有这些都是NP-硬问题。 在这项工作中,我们调整了先前开发的高压振动振动放大框架,为光谱和核聚变压规范提供了良好的近近近近,可以分解不同大小、级别和噪音水平的合成变异粒体,同时从生理信号信号中得出真实世界变异体,我们还引入了分解方法,称为稳定美元级和稳定的切片级。 实验结果表明,低级的信号比值、高压型的高级性能和高压的性能的性能提供了可比较性能。S-S-NRIS-S-S-S-S-S-S-la-S-S-S-S-S-S-N-S-S-S-S-S-S-S-S-S-S-S-S-S-S-S-S-S-S-S-S-S-S-S-S-S-S-S-S-S-S-S-S-S-S-S-S-S-S-S-S-S-S-S-S-S-S-S-S-S-S-S-S-S-S-S-S-S-S-S-S-S-S-S-S-S-S-S-S-S-S-S-S-S-S-S-S-S-S-S-S-S-S-S-S-S-S-S-S-S-S-S-S-S-S-S-S-S-S-S-S-S-S-S-S-S-S-S-S-S-S-S-S-