Convolutional neural networks (CNNs) have previously been broadly utilized to binarize document images. These methods have problems when faced with degraded historical documents. This paper proposes the utilization of CNNs to identify foreground pixels using novel input-generated multichannel images. To create the images, the original source image is decomposed into wavelet subbands. Then, the original image is approximated by each subband separately, and finally, the multichannel image is constituted by arranging the original source image (grayscale image) as the first channel and the approximated image by each subband as the remaining channels. To achieve the best results, two scenarios are considered, that is, two-channel and four-channe...
This paper presents a new adaptive binarization technique for degraded hand-held camera-captured doc...
Binarization of gray scale document images is one of the most important steps in automatic document ...
This paper presents a novel iterative deep learning framework and applies it to document enhancement...
Due to the poor condition of most of historical documents, binarization is difficult to separate doc...
Document binarization is a key step in most document analysis tasks. However, historical-document im...
Document binarization is a key step in most document analysis tasks. However, historical-document im...
Background. Since historical handwritten documents have played important roles in promoting the deve...
International audienceTo be able to process historical documents, it is often requiredto rst binariz...
Binary image is the essential format for document image processing, and the operation of the subsequ...
Large collections of historical document images have been collected by companies and government inst...
The efficient segmentation of foreground text information from the background in degraded color docu...
Most data mining applications on collections of historical documents require binarization of the dig...
Handwritten document-image binarization is a semantic segmentation process to differentiate ink pixe...
In the context of document image analysis, image binarization is an important preprocessing step for...
Degraded Document Binarization ” is that in which Libraries and Museums obtain in large gathering of...
This paper presents a new adaptive binarization technique for degraded hand-held camera-captured doc...
Binarization of gray scale document images is one of the most important steps in automatic document ...
This paper presents a novel iterative deep learning framework and applies it to document enhancement...
Due to the poor condition of most of historical documents, binarization is difficult to separate doc...
Document binarization is a key step in most document analysis tasks. However, historical-document im...
Document binarization is a key step in most document analysis tasks. However, historical-document im...
Background. Since historical handwritten documents have played important roles in promoting the deve...
International audienceTo be able to process historical documents, it is often requiredto rst binariz...
Binary image is the essential format for document image processing, and the operation of the subsequ...
Large collections of historical document images have been collected by companies and government inst...
The efficient segmentation of foreground text information from the background in degraded color docu...
Most data mining applications on collections of historical documents require binarization of the dig...
Handwritten document-image binarization is a semantic segmentation process to differentiate ink pixe...
In the context of document image analysis, image binarization is an important preprocessing step for...
Degraded Document Binarization ” is that in which Libraries and Museums obtain in large gathering of...
This paper presents a new adaptive binarization technique for degraded hand-held camera-captured doc...
Binarization of gray scale document images is one of the most important steps in automatic document ...
This paper presents a novel iterative deep learning framework and applies it to document enhancement...