Improving OCR Accuracy on Early Printed Books using Deep Convolutional Networks

02/27/2018
by   Christoph Wick, et al.
0

This paper proposes a combination of a convolutional and a LSTM network to improve the accuracy of OCR on early printed books. While the standard model of line based OCR uses a single LSTM layer, we utilize a CNN- and Pooling-Layer combination in advance of an LSTM layer. Due to the higher amount of trainable parameters the performance of the network relies on a high amount of training examples to unleash its power. Hereby, the error is reduced by a factor of up to 44 voting mechanism to achieve character error rates (CER) below 0.5 runtime of the deep model for training and prediction of a book behaves very similar to a shallow network.

READ FULL TEXT

page 8

page 12

research
11/27/2017

Improving OCR Accuracy on Early Printed Books by utilizing Cross Fold Training and Voting

In this paper we introduce a method that significantly reduces the chara...
research
08/20/2020

Line detection via a lightweight CNN with a Hough Layer

Line detection is an important computer vision task traditionally solved...
research
08/31/2016

Convolutional Neural Networks for Text Categorization: Shallow Word-level vs. Deep Character-level

This paper reports the performances of shallow word-level convolutional ...
research
04/12/2021

Predicting the Accuracy of Early-est Earthquake Magnitude Estimates with an LSTM Neural Network: A Preliminary Analysis

This report presents a preliminary analysis of an LSTM neural network de...
research
08/28/2018

Layer Trajectory LSTM

It is popular to stack LSTM layers to get better modeling power, especia...
research
10/16/2018

Reduced-Gate Convolutional LSTM Using Predictive Coding for Spatiotemporal Prediction

Spatiotemporal sequence prediction is an important problem in deep learn...
research
06/08/2018

Investigating the Impact of CNN Depth on Neonatal Seizure Detection Performance

This study presents a novel, deep, fully convolutional architecture whic...

Please sign up or login with your details

Forgot password? Click here to reset