Publications

He, D; Zhong, YF; Wang, XY; Zhang, LP (2021). Deep Convolutional Neural Network Framework for Subpixel Mapping. IEEE TRANSACTIONS ON GEOSCIENCE AND REMOTE SENSING, 59(11), 9518-9539.

Abstract
Subpixel mapping (SPM) is an effective way to solve the mixed pixel problem, which is a ubiquitous phenomenon in remotely sensed imagery, by characterizing subpixel distribution within the mixed pixels. In fact, the majority of the classical and state-of-the-art SPM algorithms can be viewed as a convolution process, but these methods rely heavily on fixed and handcrafted kernels that are insufficient in characterizing a geographically realistic distribution image. In addition, the traditional SPM approach is based on the prerequisite of abundance images derived from spectral unmixing (SU), during which process uncertainty inherently exists and is propagated to the SPM. In this article, a kernel-learnable convolutional neural network (CNN) framework for subpixel mapping (SPMCNN-F) is proposed. In SPMCNN-F, the kernel is learnable during the training stage based on the given training sample pairs of low- and high-resolution patches for learning a geographically realistic prior, instead of fixed priors. The end-to-end mapping structure enables direct subpixel information extraction from the original coarse image, avoiding the uncertainty propagation from the SU. In the experiments undertaken in this study, two state-of-the-art super-resolution networks were selected as application demonstrations of the proposed SPMCNN-F method. In experiment part, three hyperspectral image data sets were adopted, two in a synthetic coarse image approach and one in a real coarse image approach, for the validation. Additionally, a new data set with pairs of Moderate-resolution Imaging Spectroradiometer (MODIS) and Landsat images were adopted in a real coarse image approach, for further validation of SPMCNN-F in large-scale area. The restored fine distribution images obtained in all the experiments showed a perceptually better reconstruction quality, both qualitatively and quantitatively, confirming the superiority of the proposed SPM framework.

DOI:
10.1109/TGRS.2020.3032475

ISSN:
0196-2892