NeurTV: Total Variation on the Neural Domain
Recently, we have witnessed the success of total variation (TV) for many imaging applications. However, traditional TV is defined on the original pixel domain, which limits its potential. In this work, we suggest a new TV regularization defined on the neural domain. Concretely, the discrete data is...
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Zusammenfassung: | Recently, we have witnessed the success of total variation (TV) for many
imaging applications. However, traditional TV is defined on the original pixel
domain, which limits its potential. In this work, we suggest a new TV
regularization defined on the neural domain. Concretely, the discrete data is
implicitly and continuously represented by a deep neural network (DNN), and we
use the derivatives of DNN outputs w.r.t. input coordinates to capture local
correlations of data. As compared with classical TV on the original domain, the
proposed TV on the neural domain (termed NeurTV) enjoys the following
advantages. First, NeurTV is free of discretization error induced by the
discrete difference operator. Second, NeurTV is not limited to meshgrid but is
suitable for both meshgrid and non-meshgrid data. Third, NeurTV can more
exactly capture local correlations across data for any direction and any order
of derivatives attributed to the implicit and continuous nature of neural
domain. We theoretically reinterpret NeurTV under the variational approximation
framework, which allows us to build the connection between NeurTV and classical
TV and inspires us to develop variants (e.g., space-variant NeurTV). Extensive
numerical experiments with meshgrid data (e.g., color and hyperspectral images)
and non-meshgrid data (e.g., point clouds and spatial transcriptomics) showcase
the effectiveness of the proposed methods. |
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DOI: | 10.48550/arxiv.2405.17241 |