Title
Application of Phase-Based Features and Denoising in Postprocessing and Binarization of Historical Document Images
Abstract
Preprocessing and post processing steps significantly improve the performance of binarization methods, especially in the case of severely-degraded historical documents. In this paper, an unsupervised post processing method is introduced based on the phase-preserved denoised image and also phase congruency features extracted from the input image. The core of the method consists of two robust mask images that can be used to cross out false positive pixels on the output of the binarization method. First, a mask with a high recall value is obtained from the denoised image using morphological operations. In parallel, a second mask is obtained based on phase congruency features. Then, a median filter is used to remove noise on these two masks, which then are used to correct the output of any binarization method. This approach was tested along with several state-of the-art binarization methods on the DIBCO'09, H-DIBCO'10, DIBCO'11 and H-DIBCO'12 datasets with promising and robust results. Furthermore, the high performance of the proposed masks shows their potential use as unsupervised semi-ground truth generator for learning-based binarization methods.
Year
DOI
Venue
2013
10.1109/ICDAR.2013.51
ICDAR-1
Keywords
Field
DocType
document image processing,feature extraction,history,image denoising,median filters,unsupervised learning,DIBCO09 dataset,DIBCO11 dataset,H-DIBCO10 dataset,H-DIBCO12 dataset,false positive pixels,historical document image,image binarization,image denoising,learning-based binarization methods,median filter,morphological operations,phase congruency feature extraction,phase-based features,phase-preserved denoised image,recall value,unsupervised post processing method,unsupervised semiground truth generator,Document image processing,Document postperocessing,Historical document binarization,phase conruency features
Noise reduction,Computer vision,Median filter,Pattern recognition,Computer science,Feature extraction,Preprocessor,Unsupervised learning,Artificial intelligence,Pixel,Phase congruency,Historical document
Conference
ISSN
Citations 
PageRank 
1520-5363
2
0.37
References 
Authors
12
3
Name
Order
Citations
PageRank
Hossein Ziaei Nafchi1384.90
Reza Farrahi Moghaddam246934.39
Mohamed Cheriet32047238.58