2019
DOI: 10.48550/arxiv.1910.10822
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Wasserstein total variation filtering

Abstract: In this paper, we expand upon the theory of trend filtering by introducing the use of the Wasserstein metric as a means to control the amount of spatiotemporal variation in filtered time series data. While trend filtering utilizes regularization to produce signal estimates that are piecewise linear, in the case of ℓ 1 regularization, or temporally smooth, in the case of ℓ 2 regularization, it ignores the topology of the spatial distribution of signal. By incorporating the information about the underlying metri… Show more

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