A joint cross-modal super-resolution approach for vehicle detection in aerial imagery

Author(s):  
Moktari Mostofa ◽  
Syeda Nyma Ferdous ◽  
Nasser M. Nasrabadi
2020 ◽  
Author(s):  
Matheus B. Pereira ◽  
Jefersson Alex Dos Santos

High-resolution aerial images are usually not accessible or affordable. On the other hand, low-resolution remote sensing data is easily found in public open repositories. The problem is that the low-resolution representation can compromise pattern recognition algorithms, especially semantic segmentation. In this M.Sc. dissertation1 , we design two frameworks in order to evaluate the effectiveness of super-resolution in the semantic segmentation of low-resolution remote sensing images. We carried out an extensive set of experiments on different remote sensing datasets. The results show that super-resolution is effective to improve semantic segmentation performance on low-resolution aerial imagery, outperforming unsupervised interpolation and achieving semantic segmentation results comparable to highresolution data.


Author(s):  
Seongjo Kim ◽  
Won Yeong Heo ◽  
HyunSeong Sung ◽  
DeukRyeol Yoon ◽  
Jongmin Jeong

Author(s):  
Joshua Gleason ◽  
Ara V. Nefian ◽  
Xavier Bouyssounousse ◽  
Terry Fong ◽  
George Bebis

2010 ◽  
Author(s):  
Samir Sahli ◽  
Yueh Ouyang ◽  
Yunlong Sheng ◽  
Daniel A. Lavigne

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