Rongyu LiWeiqun LiuWenyu GongXiwei ZhuX. Wang
Abstract. Inspired by the immense success of deep neural network in image processing and object recognition, learning-based image super resolution (SR) methods have been highly valued and have become the mainstream direction of super resolution research. Base on the recent proposed state-of-art convolution neural network (CNN) super-resolution methods, this paper proposed a generative adversarial network for single satellite image Super Resolution reconstruction. It built on a trained deep residual network to generate preliminary SR images, combined with a discriminative network learns to differentiate preliminary SR images and High resolution samples. The experiments results show that our method can use existing model parameters to refine SR image performance.
Kalpesh PrajapatiVishal ChudasamaHeena PatelKishor UplaRaghavendra RamachandraKiran RajaChristoph Busch
Raj SarodeSamiksha VarpeOmkar KolteLeena Ragha
Ferdinand PinedaV. A. AymaRobert AduviriCésar Beltrán