Railway track fastener defect detection based on image processing and deep learning techniques: A comparative study

Author(s):  
Xiukun Wei ◽  
Ziming Yang ◽  
Yuxin Liu ◽  
Dehua Wei ◽  
Limin Jia ◽  
...  
2021 ◽  
Author(s):  
Ajay S ◽  
Manisha R ◽  
Pranav Maheshkumar Nivarthi ◽  
Sai Harsha Nadendla ◽  
C Santhosh Kumar

Author(s):  
Argyrios P. Ketsetsis ◽  
Konstantinos M. Giannoutakis ◽  
Georgios Spanos ◽  
Nikolaos Samaras ◽  
Dimitrios Hristu-Varsakelis ◽  
...  

2019 ◽  
Vol 63 (11) ◽  
pp. 1658-1667
Author(s):  
M J Castro-Bleda ◽  
S España-Boquera ◽  
J Pastor-Pellicer ◽  
F Zamora-Martínez

Abstract This paper presents the ‘NoisyOffice’ database. It consists of images of printed text documents with noise mainly caused by uncleanliness from a generic office, such as coffee stains and footprints on documents or folded and wrinkled sheets with degraded printed text. This corpus is intended to train and evaluate supervised learning methods for cleaning, binarization and enhancement of noisy images of grayscale text documents. As an example, several experiments of image enhancement and binarization are presented by using deep learning techniques. Also, double-resolution images are also provided for testing super-resolution methods. The corpus is freely available at UCI Machine Learning Repository. Finally, a challenge organized by Kaggle Inc. to denoise images, using the database, is described in order to show its suitability for benchmarking of image processing systems.


Sign in / Sign up

Export Citation Format

Share Document