This paper proposes a pre-training method for neural network-based character recognizers to reduce the required amount of training data, and thus the human labeling effort. The proposed method transfers knowledge about the similarities between graph representations of characters to the recognizer by training to predict the graph edit distance. We show that convolutional neural networks trained with this method outperform traditional supervised learning if only ten or less labeled images per class are available. Furthermore, we show that our approach performs up to 33% better than a graph edit distance based recognition approach, even if only one labeled image per class is available. © 2019 IEEE.open access</p
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Neural networks have made big strides in image classification. Convolutional neural networks (CNN) w...
The most efficient and beneficial mechanism to the feature of extracting data from an image, has bee...
This thesis presents two principled approaches to improve the performance of convolutional neural ne...
The aim of this paper is to present a new method Optical Character\ud Recognition (OCR).\ud For it w...
This thesis focuses on a problem of character recognition from real scenes, which has earned signifi...
Tifinagh handwritten character recognition has been a challenging problem due to the similarity and ...
With convolutional neural networks revolutionizing the computer vision field it is important to exte...
International audienceOptical Character Recognition (OCR) systems have been designed to operate on t...
XXI century is the age of global automation and digitization. There is high demand for optical recog...
This paper devoted the character recognition.The process of neural networks modeling for pattern rec...
We propose a new machine learning paradigm called Graph Transformer Networks that extends the applic...
Graphs are an intuitive and natural way of representing handwriting. Due to their high representatio...
The emergence of geometric deep learning as a novel framework to deal with graph-based representatio...
Recent years have brought progress in the graph machine learning space, with the unsupervised graph...
This paper describes a NEURAL NETWORK based technique for feature extraction applicable to segmentat...
Neural networks have made big strides in image classification. Convolutional neural networks (CNN) w...