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首页> 外文期刊>ISPRS Journal of Photogrammetry and Remote Sensing >GTP-PNet: A residual learning network based on gradient transformation prior for pansharpening
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GTP-PNet: A residual learning network based on gradient transformation prior for pansharpening

机译:GTP-PENT:基于Pansharpening之前的基于梯度变换的剩余学习网络

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摘要

Pansharpening aims to fuse low-resolution multi-spectral image and high-resolution panchromatic (PAN) image to produce a high-resolution multi-spectral (HRMS) image. In this paper, a new residual learning network based on gradient transformation prior, termed as GTP-PNet, is proposed to generate the high-quality HRMS image with accurate spectral distribution as well as reasonable spatial structure. Different from previous deep models that only rely on supervision of the HRMS reference image, we introduce the gradient transformation prior to the deep model, so as to improve the solution accuracy. Our model consists of two networks, namely gradient transformation network (TNet) and pansharpening network (PNet). TNet is committed to seeking the nonlinear mapping between gradients of PAN and HRMS images, which is essentially a spatial relationship regression of imaging bands in different ranges. PNet is the residual learning network used to generate the HRMS image, which is not only supervised by the HRMS reference image, but also constrained by the trained TNet. As a result, the HRMS image generated by PNet not only approximates the HRMS reference image in the spectral distribution, but also conforms to the gradient transformation prior in the spatial structure. Experimental results demonstrate the significant superiority of our method over the current state-of-the-arts in terms of both subjective visual effect and quantitative metrics. We also apply our method to produce the HR normalized difference vegetation index in remote sensing, which can achieve the best performance. Moreover, our method is much competitive compared with the state-of-the-art alternatives in running efficiency.
机译:Pansharpening旨在融合低分辨率多光谱图像和高分辨率平板图像图像以产生高分辨率多光谱(HRMS)图像。在本文中,提出了一种基于梯度变换的新的残余学习网络称为GTP-PNET,以产生具有精确光谱分布的高质量HRMS图像以及合理的空间结构。与以前的深层模型不同,只依赖于HRMS参考图像的监督,我们在深度模型之前介绍了梯度变换,从而提高了解决方案准确性。我们的模型包括两个网络,即梯度变换网络(TNET)和泛汉语网络(PNET)。 TNET致力于寻求PAN和HRMS图像梯度之间的非线性映射,这基本上是不同范围内成像带的空间关系回归。 PNET是用于生成HRMS图像的残余学习网络,其不仅由HRMS参考图像监督,而且由训练的TNET限制。结果,由PNET生成的HRMS图像不仅近似于光谱分布中的HRMS参考图像,而且还符合在空间结构之前的梯度变换。实验结果表明,在目前的最先进的主观视觉效果和定量度量方面,我们对目前最先进的方法的显着优越性。我们还应用我们的方法来生产遥感中的HR标准化差异植被指数,可以实现最佳性能。此外,我们的方法与运行效率的最先进的替代方案相比有很大竞争力。

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