Unconstrained handwritten document recognition is a challenging computer vision task. It is traditionally handled by a two-step approach combining line segmentation followed by text line recognition. For the first time, we propose an end-to-end segmentation-free architecture for the task of handwritten document recognition: the Document Attention Network. In addition to the text recognition, the model is trained to label text parts using begin and end tags in an XML-like fashion. This model is made up of an FCN encoder for feature extraction and a stack of transformer decoder layers for a recurrent token-by-token prediction process. It takes whole text documents as input and sequentially outputs characters, as well as logical layout tokens....
open access articleOffline handwritten Chinese text recognition is one of the most challenging tasks...
Pre-trained weights of the Vertical Attention Network at line (pre-training stage) and paragraph lev...
Text recognition has attracted considerable research interests because of its various applications. ...
Pretrained Document Attention Networks on two datasets: READ 2016 and RIMES 2009. "fcn_line_syn" in...
International audienceThe handwriting recognition task is largely dominated by deep neural networks....
Recent advances in handwritten text recognition enabled to recognize whole documents in an end-to-en...
International audienceWe present a learning-based method for handwritten text line segmentation in d...
Recent advances in handwritten text recognition enabled to recognize whole documents in an end-to-en...
Historical documents present in the form of libraries needs to be digitised. The recognition of thes...
The paper presents a segmentation based adaptive approach for the learning and recognition of single...
An algorithm for segmenting unconstrained printed and cursive words is proposed. The algorithm initi...
The paper documents recognition is fundamental for office automation becoming every day a more power...
International audienceUnconstrained handwritten text recognition remains challenging for computer vi...
After some years of experience, humans read handwritten texts in a remarkably effortless and swift m...
A set of algorithms is presented that enables a computer to automatically read a paragraph of handpr...
open access articleOffline handwritten Chinese text recognition is one of the most challenging tasks...
Pre-trained weights of the Vertical Attention Network at line (pre-training stage) and paragraph lev...
Text recognition has attracted considerable research interests because of its various applications. ...
Pretrained Document Attention Networks on two datasets: READ 2016 and RIMES 2009. "fcn_line_syn" in...
International audienceThe handwriting recognition task is largely dominated by deep neural networks....
Recent advances in handwritten text recognition enabled to recognize whole documents in an end-to-en...
International audienceWe present a learning-based method for handwritten text line segmentation in d...
Recent advances in handwritten text recognition enabled to recognize whole documents in an end-to-en...
Historical documents present in the form of libraries needs to be digitised. The recognition of thes...
The paper presents a segmentation based adaptive approach for the learning and recognition of single...
An algorithm for segmenting unconstrained printed and cursive words is proposed. The algorithm initi...
The paper documents recognition is fundamental for office automation becoming every day a more power...
International audienceUnconstrained handwritten text recognition remains challenging for computer vi...
After some years of experience, humans read handwritten texts in a remarkably effortless and swift m...
A set of algorithms is presented that enables a computer to automatically read a paragraph of handpr...
open access articleOffline handwritten Chinese text recognition is one of the most challenging tasks...
Pre-trained weights of the Vertical Attention Network at line (pre-training stage) and paragraph lev...
Text recognition has attracted considerable research interests because of its various applications. ...