Share your thoughts, 1 month free Claude Pro on usSee more
WorkDL logo mark

Reparameterized Tensor Ring Functional Decomposition for Multi-Dimensional Data Recovery

About

Tensor Ring (TR) decomposition is a powerful tool for high-order data modeling, but is inherently restricted to discrete forms defined on fixed meshgrids. In this work, we propose a TR functional decomposition for both meshgrid and non-meshgrid data, where factors are parameterized by Implicit Neural Representations (INRs). However, optimizing this continuous framework to capture fine-scale details is intrinsically difficult. Through a frequency-domain analysis, we demonstrate that the spectral structure of TR factors determines the frequency composition of the reconstructed tensor and limits the high-frequency modeling capacity. To mitigate this, we propose a reparameterized TR functional decomposition, in which each TR factor is a structured combination of a learnable latent tensor and a fixed basis. This reparameterization is theoretically shown to improve the training dynamics of TR factor learning. We further derive a principled initialization scheme for the fixed basis and prove the Lipschitz continuity of our proposed model. Extensive experiments on image inpainting, denoising, super-resolution, and point cloud recovery demonstrate that our method achieves consistently superior performance over existing approaches. Code is available at https://github.com/YangyangXu2002/RepTRFD.

Yangyang Xu, Junbo Ke, You-Wei Wen, Chao Wang• 2026

Related benchmarks

TaskDatasetResultRank
Multispectral Image DenoisingToys & Face MSI 256 x 256 x 31 (test)
PSNR40.8
56
Color Image RecoveryAirplane color image
PSNR33.61
42
Color Image RecoveryHouse color image
PSNR30.98
42
Color Image RecoveryPepper color image
PSNR32.46
42
Color Image RecoverySailboat color image
PSNR31
42
DenoisingWashington DC 256 x 256 x 191 HSI (test)
PSNR37.96
35
DenoisingSalinas (217 x 217 x 224) HSI (test)
PSNR42.77
35
Tensor completionToys 256 x 256 x 31
PSNR48.67
35
Tensor completionFlowers 256 x 256 x 31
PSNR50.13
35
Tensor completionWashington DC 256 x 256 x 191
PSNR47.96
35
Showing 10 of 23 rows

Other info

Follow for update