Exploiting Digital Surface Models for Inferring Super-Resolution for Remotely Sensed Images
Savvas Karatsiolis, Chirag Padubidri, Andreas Kamilaris

TL;DR
This paper introduces a novel super-resolution method for remote sensing images that leverages pixel-level information from Digital Surface Models during training, resulting in highly realistic reconstructions without needing additional data during inference.
Contribution
The proposed approach uses nDSM data as a perceptual loss during training, improving remote sensing super-resolution without extra data at inference time.
Findings
Super-resolution images are visually superior and realistic.
Results on DFC2018 dataset are nearly indistinguishable from ground truth.
Method outperforms non-specialized SRR models on remote sensing data.
Abstract
Despite the plethora of successful Super-Resolution Reconstruction (SRR) models applied to natural images, their application to remote sensing imagery tends to produce poor results. Remote sensing imagery is often more complicated than natural images and has its peculiarities such as being of lower resolution, it contains noise, and often depicting large textured surfaces. As a result, applying non-specialized SRR models on remote sensing imagery results in artifacts and poor reconstructions. To address these problems, this paper proposes an architecture inspired by previous research work, introducing a novel approach for forcing an SRR model to output realistic remote sensing images: instead of relying on feature-space similarities as a perceptual loss, the model considers pixel-level information inferred from the normalized Digital Surface Model (nDSM) of the image. This strategy…
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Taxonomy
TopicsAdvanced Image Processing Techniques · Advanced Image Fusion Techniques · Advanced Vision and Imaging
