Image Processing
Self-Supervised Push-Frame Super-Resolution With Detail-Preserving Control And Outlier Detection
Published on - 2022 IEEE International Geoscience and Remote Sensing Symposium (IGARSS 2022)
Self-supervised training enables the application of deeplearning based methods for multi-image super-resolution of satellite imagery. In this work we propose two improvements on the self-supervised Deep-Shift-and-Add (DSA) method introduced by Nguyen et al. First, we demonstrate how the self-supervised loss of DSA can be extended to provide the image interpreter with a spatially varying parameter to control the trade-off between detail preservation and noise removal at test time. Second, we endow the DSA architecture with a mechanism that enables the network to be robust to outliers produced for example by dead pixels, reflections or registration errors.