Handwriting Recognition
49 papers with code • 3 benchmarks • 20 datasets
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Use these libraries to find Handwriting Recognition models and implementationsLatest papers
Character Queries: A Transformer-based Approach to On-Line Handwritten Character Segmentation
On-line handwritten character segmentation is often associated with handwriting recognition and even though recognition models include mechanisms to locate relevant positions during the recognition process, it is typically insufficient to produce a precise segmentation.
Writer adaptation for offline text recognition: An exploration of neural network-based methods
In this paper, we explore how HTR models can be made writer adaptive by using only a handful of examples from a new writer (e. g., 16 examples) for adaptation.
FPGA Implementation of Convolutional Neural Network for Real-Time Handwriting Recognition
Machine Learning (ML) has recently been a skyrocketing field in Computer Science.
BN-DRISHTI: Bangla Document Recognition through Instance-level Segmentation of Handwritten Text Images
Handwriting recognition remains challenging for some of the most spoken languages, like Bangla, due to the complexity of line and word segmentation brought by the curvilinear nature of writing and lack of quality datasets.
Huruf: An Application for Arabic Handwritten Character Recognition Using Deep Learning
Prominent work has been done in this field focusing mainly on Latin characters.
SoftCTC -- Semi-Supervised Learning for Text Recognition using Soft Pseudo-Labels
This paper explores semi-supervised training for sequence tasks, such as Optical Character Recognition or Automatic Speech Recognition.
UIT-HWDB: Using Transferring Method to Construct A Novel Benchmark for Evaluating Unconstrained Handwriting Image Recognition in Vietnamese
Recognizing handwriting images is challenging due to the vast variation in writing style across many people and distinct linguistic aspects of writing languages.
Kurdish Handwritten Character Recognition using Deep Learning Techniques
From the experimental results, it is clear that the proposed deep learning model is performing well and is comparable to the similar model of other languages' handwriting recognition systems.
Towards End-to-end Handwritten Document Recognition
We proposed an approach at the line level, based on a fully convolutional network, in order to design a first generic feature extraction step for the handwriting recognition task.
Improving Accuracy and Explainability of Online Handwriting Recognition
A wide range of applications from signature verification to electronic document processing can be realized by implementing efficient and accurate handwriting recognition algorithms.