Pansharpening via Detail Injection Based Convolutional Neural Networks

23 Jun 2018  ยท  He Lin, Rao Yizhou, Li Jun, Plaza Antonio, Zhu Jiawei ยท

Pansharpening aims to fuse a multispectral (MS) image with an associated panchromatic (PAN) image, producing a composite image with the spectral resolution of the former and the spatial resolution of the latter. Traditional pansharpening methods can be ascribed to a unified detail injection context, which views the injected MS details as the integration of PAN details and band-wise injection gains. In this work, we design a detail injection based CNN (DiCNN) framework for pansharpening, with the MS details being directly formulated in end-to-end manners, where the first detail injection based CNN (DiCNN1) mines MS details through the PAN image and the MS image, and the second one (DiCNN2) utilizes only the PAN image. The main advantage of the proposed DiCNNs is that they provide explicit physical interpretations and can achieve fast convergence while achieving high pansharpening quality. Furthermore, the effectiveness of the proposed approaches is also analyzed from a relatively theoretical point of view. Our methods are evaluated via experiments on real-world MS image datasets, achieving excellent performance when compared to other state-of-the-art methods.

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Datasets


Task Dataset Model Metric Name Metric Value Global Rank Benchmark
Pansharpening Full WorldView-3 PanCollection LAGConv HQNR 0.9230 # 1
D_lambda 0.0368 # 1
D_s 0.0418 # 1
Pansharpening PanCollection PNN ERGAS 2.7756 # 1
SAM 3.6054 # 2
Q8 0.8797 # 2
Pansharpening PanCollection DiCNN ERGAS 2.7795 # 2
SAM 3.5170 # 1
Q8 0.8864 # 1
Pansharpening Reduced QuickBird PanCollection LAGConv SAM 4.5548 # 1
ERGAS 3.8436 # 1
Q4 0.9314 # 1
Pansharpening Reduced WorldView-3 PanCollection LAGConv SAM 3.0414 # 1
ERGAS 2.3700 # 1
Q8 0.8961 # 1

Methods


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