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Deeply Learned Robust Matrix Completion for Large-scale Low-rank Data Recovery

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Robust matrix completion (RMC) is a widely used machine learning tool that simultaneously tackles two critical issues in low-rank data analysis: missing data entries and extreme outliers. This paper proposes a novel scalable and learnable non-convex approach, coined Learned Robust Matrix Completion (LRMC), for large-scale RMC problems. LRMC enjoys low computational complexity with linear convergence. Motivated by the proposed theorem, the free parameters of LRMC can be effectively learned via deep unfolding to achieve optimum performance. Furthermore, this paper proposes a flexible feedforward-recurrent-mixed neural network framework that extends deep unfolding from fix-number iterations to infinite iterations. The superior empirical performance of LRMC is verified with extensive experiments against state-of-the-art on synthetic datasets and real applications, including video background subtraction, ultrasound imaging, face modeling, and cloud removal from satellite imagery.

HanQin Cai, Chandra Kundu, Jialin Liu, Wotao Yin• 2024

Related benchmarks

TaskDatasetResultRank
Video background subtractionVIRAT 1.0 (verification)
Runtime (s)1.68
20
Cloud RemovalAtlanta City satellite imagery 400 x 400
Runtime1.65
4
Cloud RemovalAtlanta City satellite imagery 1000 x 1000
Runtime (s)16.07
4
Face ModelingAR Face Database (test)
Average Inference Time (s)0.16
4
Ultrasound image reconstructionUltrasound imaging dataset
Average inference time (secs)0.0036
3
Cloud RemovalAtlanta City satellite imagery 2000 x 2000
Runtime (s)68.24
2
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