Junmei Tang
George Mason University
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Publication
Featured researches published by Junmei Tang.
Remote Sensing | 2018
Zhenyu Tan; Peng Yue; Liping Di; Junmei Tang
Due to technical and budget limitations, there are inevitably some trade-offs in the design of remote sensing instruments, making it difficult to acquire high spatiotemporal resolution remote sensing images simultaneously. To address this problem, this paper proposes a new data fusion model named the deep convolutional spatiotemporal fusion network (DCSTFN), which makes full use of a convolutional neural network (CNN) to derive high spatiotemporal resolution images from remotely sensed images with high temporal but low spatial resolution (HTLS) and low temporal but high spatial resolution (LTHS). The DCSTFN model is composed of three major parts: the expansion of the HTLS images, the extraction of high frequency components from LTHS images, and the fusion of extracted features. The inputs of the proposed network include a pair of HTLS and LTHS reference images from a single day and another HTLS image on the prediction date. Convolution is used to extract key features from inputs, and deconvolution is employed to expand the size of HTLS images. The features extracted from HTLS and LTHS images are then fused with the aid of an equation that accounts for temporal ground coverage changes. The output image on the prediction day has the spatial resolution of LTHS and temporal resolution of HTLS. Overall, the DCSTFN model establishes a complex but direct non-linear mapping between the inputs and the output. Experiments with MODerate Resolution Imaging Spectroradiometer (MODIS) and Landsat Operational Land Imager (OLI) images show that the proposed CNN-based approach not only achieves state-of-the-art accuracy, but is also more robust than conventional spatiotemporal fusion algorithms. In addition, DCSTFN is a faster and less time-consuming method to perform the data fusion with the trained network, and can potentially be applied to the bulk processing of archived data.
international conference on agro geoinformatics | 2016
Li Lin; Liping Di; Eugene Genong Yu; Lingjun Kang; Ranjay Shrestha; Md. Shahinoor Rahman; Junmei Tang; Meixia Deng; Ziheng Sun; Chen Zhang; Lei Hu
international conference on agro-geoinformatics | 2017
Eugene G. Yu; Liping Di; Md. Shahinoor Rahman; Li Lin; Chen Zhang; Lei Hu; Ranjay Shrestha; Lingjun Kang; Junmei Tang; Guangyuan Yang
international conference on agro geoinformatics | 2018
Md. Shahinoor Rahman; Liping Di; Eugene G. Yu; Junmei Tang; Li Lin; Chen Zhang; Zhiqi Yu; Juozas Gaigalas
international conference on agro geoinformatics | 2018
Zhiqi Yu; Liping Di; Junmei Tang; Chen Zhang; Li Lin; Eugene Genong Yu; Md. Shahinoor Rahman; Juozas Gaigalas; Ziheng Sun
international conference on agro geoinformatics | 2018
Li Lin; Liping Di; Ruixin Yang; Chen Zhang; Eugene Yu; Md. Shahinoor Rahman; Ziheng Sun; Junmei Tang
international conference on agro geoinformatics | 2018
Aihong Gai; Liping Di; Junmei Tang; Liying Guo; Yonglan Qian; Dongmei Zhou; Qian Lu; Jinrui Song; Guozhang Cen
international conference on agro-geoinformatics | 2017
Chen Zhang; Liping Di; Ziheng Sun; Eugene G. Yu; Lei Hu; Li Lin; Junmei Tang; Md. Shahinoor Rahman
international conference on agro-geoinformatics | 2017
Lei Hu; Liping Di; Eugene Yu; Peng Yue; Junmei Tang; Li Lin; Chen Zhang; Ziheng Sun; Ruiheng Hu; Ranjay Shrestha; Md. Shahinoor Rahman
international conference on agro-geoinformatics | 2017
Li Lin; Liping Di; Eugene Genong Yu; Junmei Tang; Ranjay Shrestha; Md. Shahinoor Rahman; Lingjun Kang; Ziheng Sun; Chen Zhang; Lei Hu; Guangyuan Yang; Zhengwei Yang