Beyond Low Rank: A Graph-Based Propagation Approach to Tensor Completion for Multi-Acquisition Scenarios
Iain Rolland, Sivasakthy Selvakumaran, Andrea Marinoni

TL;DR
This paper introduces GraphProp, a graph-based diffusion method for tensor completion that effectively recovers missing data in multi-acquisition scenarios without relying on low-rank assumptions, outperforming existing methods.
Contribution
The paper presents a novel graph-based diffusion approach for tensor completion applicable to multi-acquisition data, independent of tensor rank constraints.
Findings
Successfully recovers both low and high rank tensor entries.
Outperforms existing tensor completion and graph signal recovery methods.
Effective in real-world multispectral remote sensing data.
Abstract
Tensor completion refers to the problem of recovering the missing, corrupted or unobserved entries in data represented by tensors. In this paper, we tackle the tensor completion problem in the scenario in which multiple tensor acquisitions are available and do so without placing constraints on the underlying tensor's rank. Whereas previous tensor completion work primarily focuses on low-rank completion methods, we propose a novel graph-based diffusion approach to the problem. Referred to as GraphProp, the method propagates observed entries around a graph-based representation of the tensor in order to recover the missing entries. A series of experiments have been performed to validate the presented approach, including a synthetically-generated tensor recovery experiment which shows that the method can be used to recover both low and high rank tensor entries. The successful tensor…
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Taxonomy
TopicsSparse and Compressive Sensing Techniques · MRI in cancer diagnosis · Advanced Image Fusion Techniques
MethodsDiffusion
