Our new X account is live! Follow @wizwand_team for updates
WorkDL logo mark

Boosting the accuracy of multi-spectral image pan-sharpening by learning a deep residual network

About

In the field of fusing multi-spectral and panchromatic images (Pan-sharpening), the impressive effectiveness of deep neural networks has been recently employed to overcome the drawbacks of traditional linear models and boost the fusing accuracy. However, to the best of our knowledge, existing research works are mainly based on simple and flat networks with relatively shallow architecture, which severely limited their performances. In this paper, the concept of residual learning has been introduced to form a very deep convolutional neural network to make a full use of the high non-linearity of deep learning models. By both quantitative and visual assessments on a large number of high quality multi-spectral images from various sources, it has been supported that our proposed model is superior to all mainstream algorithms included in the comparison, and achieved the highest spatial-spectral unified accuracy.

Yancong Wei, Qiangqiang Yuan, Huanfeng Shen, Liangpei Zhang• 2017

Related benchmarks

TaskDatasetResultRank
PansharpeningWorldView-2 Miami PairMax (test)
D_lambda, align(K)0.054
29
PansharpeningGeoEye-1 PairMax (London+Trenton)
D_lambda,align (K)0.083
29
PansharpeningWorldView-2 Washington (test)
Spectral Distance Lambda (Aligned, K)0.063
29
PansharpeningWorldView-3 Munich (PairMax) WV3 (test)
D_lambda, align^(K)0.198
29
PansharpeningWorldView-3 Adelaide (test)
Spectral Divergence (Lambda, Align, K)0.151
29
PansharpeningGaoFen2 (test)
PSNR35.1182
25
PansharpeningWorldView-2 reduced-resolution 256 × 256 subscene
Q8 Index0.9325
19
PansharpeningLandsat8 (test)
PSNR37.3639
14
PansharpeningQuickBird (test)
PSNR31.0415
14
PansharpeningQuickbird Chilika Lake subscene reduced-resolution
Q489.79
10
Showing 10 of 11 rows

Other info

Follow for update