2020
DOI: 10.3390/rs12040698
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A Novel Deep Learning-Based Spatiotemporal Fusion Method for Combining Satellite Images with Different Resolutions Using a Two-Stream Convolutional Neural Network

Abstract: Spatiotemporal fusion is considered a feasible and cost-effective way to solve the trade-off between the spatial and temporal resolution of satellite sensors. Recently proposed learning-based spatiotemporal fusion methods can address the prediction of both phenological and land-cover change. In this paper, we propose a novel deep learning-based spatiotemporal data fusion method that uses a two-stream convolutional neural network. The method combines both forward and backward prediction to generate a target fin… Show more

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Cited by 30 publications
(22 citation statements)
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“…Differently from existing DL-based STF methods that need at least two pairs of finecoarse images [42,48,[53][54][55], HDLSFM requires minimal input data, i.e., a known fine ( ) and a coarse ( ) image at a base date ( ), and a coarse image ( ) at a prediction date ( ), to generate a robust target fine image ( ) containing both PC and LC information. This is achieved through a hybrid framework consisting of a nonlinear DL-based relative radiometric normalization that alleviates radiation differences, a DL-based SR algorithm for LC prediction, and linear-based fusion for PC prediction.…”
Section: Methodsmentioning
confidence: 99%
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“…Differently from existing DL-based STF methods that need at least two pairs of finecoarse images [42,48,[53][54][55], HDLSFM requires minimal input data, i.e., a known fine ( ) and a coarse ( ) image at a base date ( ), and a coarse image ( ) at a prediction date ( ), to generate a robust target fine image ( ) containing both PC and LC information. This is achieved through a hybrid framework consisting of a nonlinear DL-based relative radiometric normalization that alleviates radiation differences, a DL-based SR algorithm for LC prediction, and linear-based fusion for PC prediction.…”
Section: Methodsmentioning
confidence: 99%
“…Note that an aggregation step before the nonlinear mapping formulation is necessary, since a direct establishment of the mapping between the original fine and coarse images may not be effective due to the significant magnification, and may introduce uncertainties [42,53]. Instead, by aggregating the spatial resolution of the fine image to reduce the magnification, the reliability of the nonlinear mapping is improved.…”
Section: Radiation Normalization and Landcover Change Predictionmentioning
confidence: 99%
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