Document binarization is a key step in most document analysis tasks. However, historical-document images usually suffer from various degradations, making this a very challenging processing stage. The performance of document image binarization has improved dramatically in recent years by the use of Convolutional Neural Networks (CNNs). In this paper, a dual-task, T-shaped neural network is proposed that has the main task of binarization and an auxiliary task of image enhancement. The neural network for enhancement learns the degradations in document images and the specific CNN-kernel features can be adapted towards the binarization task in the training process. In addition, the enhancement image can be considered as an improved version of th...
Binarization of a gray scale document image is one of the most important steps for automatic documen...
Binarization is a well-known image processing task, whose objective is to separate the foreground of...
Over the last decades companies and government institutions have gathered vast collections of images...
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...
Due to the poor condition of most of historical documents, binarization is difficult to separate doc...
Convolutional neural networks (CNNs) have previously been broadly utilized to binarize document imag...
This paper presents a novel iterative deep learning framework and applies it to document enhancement...
International audienceTo be able to process historical documents, it is often requiredto rst binariz...
Background. Since historical handwritten documents have played important roles in promoting the deve...
This paper presents a novel iterative deep learning framework and applies it to document enhancement...
Large collections of historical document images have been collected by companies and government inst...
In the context of document image analysis, image binarization is an important preprocessing step for...
Binarization of gray scale document images is one of the most important steps in automatic document ...
Handwritten document-image binarization is a semantic segmentation process to differentiate ink pixe...
Binarization of a gray scale document image is one of the most important steps for automatic documen...
Binarization is a well-known image processing task, whose objective is to separate the foreground of...
Over the last decades companies and government institutions have gathered vast collections of images...
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...
Due to the poor condition of most of historical documents, binarization is difficult to separate doc...
Convolutional neural networks (CNNs) have previously been broadly utilized to binarize document imag...
This paper presents a novel iterative deep learning framework and applies it to document enhancement...
International audienceTo be able to process historical documents, it is often requiredto rst binariz...
Background. Since historical handwritten documents have played important roles in promoting the deve...
This paper presents a novel iterative deep learning framework and applies it to document enhancement...
Large collections of historical document images have been collected by companies and government inst...
In the context of document image analysis, image binarization is an important preprocessing step for...
Binarization of gray scale document images is one of the most important steps in automatic document ...
Handwritten document-image binarization is a semantic segmentation process to differentiate ink pixe...
Binarization of a gray scale document image is one of the most important steps for automatic documen...
Binarization is a well-known image processing task, whose objective is to separate the foreground of...
Over the last decades companies and government institutions have gathered vast collections of images...