English Handwriting Recognition with CRNN and CTC Loss
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Updated
Oct 1, 2018 - Python
English Handwriting Recognition with CRNN and CTC Loss
Train a Text Recognition CRNN model with Tensorflow2 & Keras & IAM Dataset. Convolutional Recurrent Neural Network. CTC.
handwritten word recognition with IAM dataset using CNN-Bi-LSTM and Bi-GRU implementation.
This project shows how to build a simple handwriting recognizer in Keras with the IAM dataset.
An ongoing & curated collection of awesome software best practices and remediation techniques, libraries and frameworks, E-books and videos, Technical guidelines and important resources about Identiy & Access Management (IAM).
Handwriting Recognition Project
Pytorch implementation of HTR on IAM dataset (word or line level + CTC loss)
Deformation-invariant line-level Handwritten Text Recognition (HTR) using a convolutional-only architecture.
Use Convolutional Recurrent Neural Network to recognize the Handwritten line text image without pre segmentation into words or characters. Use CTC loss Function to train.
Improved Text recognition algorithms on different text domains like scene text, handwritten, document, Chinese/English, even ancient books
Easter2.0: IMPROVING CONVOLUTIONAL MODELS FOR HANDWRITTEN TEXT RECOGNITION
Benchmark of different network architectures for handwritten text recognition.
Implementation of Handwritten Text Recognition Systems using TensorFlow
Official PyTorch Implementation of "WordStylist: Styled Verbatim Handwritten Text Generation with Latent Diffusion Models" - ICDAR 2023
Basic HTR concepts/modules to boost performance
Models for handwriting generation for academic purposes (My Bachelor thesis)
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