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Enhanced image approximation using shifted rank-1 reconstruction (1810.01681v1)

Published 3 Oct 2018 in math.NA and cs.NA

Abstract: Low rank approximation has been extensively studied in the past. It is most suitable to reproduce rectangular like structures in the data. In this work we introduce a generalization using shifted rank-1 matrices to approximate $A\in\mathbb{C}{M\times N}$. These matrices are of the form $S_{\lambda}(uv*)$ where $u\in\mathbb{C}M$, $v\in\mathbb{C}N$ and $\lambda\in\mathbb{Z}N$.The operator $S_{\lambda}$ circularly shifts the k-th column of $uv*$ by $\lambda_k$. These kind of shifts naturally appear in applications, where an object $u$ is observed in $N$ measurements at different positions indicated by the shift $\lambda$. The vector $v$ gives the observation intensity. Exemplary, a seismic wave can be recorded at $N$ sensors with different time of arrival $\lambda$; Or a car moves through a video changing its position in every frame. We present theoretical results as well as an efficient algorithm to calculate a shifted rank-1 approximation in $O(NM \log M)$. The benefit of the proposed method is demonstrated in numerical experiments. A comparison to other sparse approximation methods is given. Finally, we illustrate the utility of the extracted parameters for direct information extraction in several applications including video processing or non-destructive testing.

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