2020
DOI: 10.3390/rs12101674
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Two-Path Network with Feedback Connections for Pan-Sharpening in Remote Sensing

Abstract: High-resolution multi-spectral images are desired for applications in remote sensing. However, multi-spectral images can only be provided in low resolutions by optical remote sensing satellites. The technique of pan-sharpening wants to generate high-resolution multi-spectral (MS) images based on a panchromatic (PAN) image and the low-resolution counterpart. The conventional deep learning based pan-sharpening methods process the panchromatic and the low-resolution image in a feedforward manner where shallow lay… Show more

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Cited by 16 publications
(8 citation statements)
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References 39 publications
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“…In a subsequent work, Liu et al [43] proposed an improvement on TFNet, called ResTFNet, that further improves the performance of the proposed network by using basic residual blocks instead of the continuous convolutional layer in TFNet. Inspired by the dual-stream network structure, Fu et al [44] proposed a network structure called TPNwFB that, after extracting spatial and spectral information, introduces a feedback connectivity mechanism to implement a subnetwork iterative process using recurrent structures, which allows strong-deep feature backflow to modify poor low-level features.…”
Section: Cnn-based Pan-sharpeningmentioning
confidence: 99%
See 2 more Smart Citations
“…In a subsequent work, Liu et al [43] proposed an improvement on TFNet, called ResTFNet, that further improves the performance of the proposed network by using basic residual blocks instead of the continuous convolutional layer in TFNet. Inspired by the dual-stream network structure, Fu et al [44] proposed a network structure called TPNwFB that, after extracting spatial and spectral information, introduces a feedback connectivity mechanism to implement a subnetwork iterative process using recurrent structures, which allows strong-deep feature backflow to modify poor low-level features.…”
Section: Cnn-based Pan-sharpeningmentioning
confidence: 99%
“…Li et al [50] carefully designed a feedback block to extract powerful high-level representations for low-level computer-vision tasks and transmit high-level representations to perfect low-level functions. Fu et al [44] added this feedback connection mechanism for super-resolution tasks to the network for pan-sharpening. They enable the featureextraction block to generate more powerful features by iterating the information in each subnetwork to the same module of the next subnetwork, iteratively up and downsampling the input features to achieve the feedback connectivity mechanism.…”
Section: Feedback Connection Structurementioning
confidence: 99%
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“…The spectral discriminators and the spatial discriminators are established to approximate the generated HRMS image consistent with the source images distribution. Besides, there are some other fusion models, such as the dense connection in DenseNet [32,33] the progressive up-sampling method [28], the feedback mechanism [34], etc. In conclusion, CNNs bring a new exploring direction and a superior fusion performance for pan-sharpening.…”
Section: Pan-sharpening Based On Cnnsmentioning
confidence: 99%
“…However, multi-spectral images can only be provided in low resolutions by optical remote sensing satellites. In the contribution by Fu et al [5] "Two-Path Network with Feedback Connections for Pan-Sharpening in Remote Sensing," authors present a new pan-sharpening technique which generates high-resolution multi-spectral images based on a panchromatic image and the low-resolution counterpart. The conventional deep learning based pan-sharpening methods process the panchromatic and the low-resolution image in a feedforward manner, where shallow layers fail to access useful information from deep layers.…”
Section: Applicationsmentioning
confidence: 99%