Evaluation of the Effect of Improper Segmentation on Word Spotting

04/21/2016
by   Sounak Dey, et al.
0

Word spotting is an important recognition task in historical document analysis. In most cases methods are developed and evaluated assuming perfect word segmentations. In this paper we propose an experimental framework to quantify the effect of goodness of word segmentation has on the performance achieved by word spotting methods in identical unbiased conditions. The framework consists of generating systematic distortions on segmentation and retrieving the original queries from the distorted dataset. We apply the framework on the George Washington and Barcelona Marriage Dataset and on several established and state-of-the-art methods. The experiments allow for an estimate of the end-to-end performance of word spotting methods.

READ FULL TEXT

page 2

page 5

research
11/06/2018

Fast Neural Chinese Word Segmentation for Long Sentences

Rapidly developed neural models have achieved competitive performance in...
research
04/24/2017

Fast and Accurate Neural Word Segmentation for Chinese

Neural models with minimal feature engineering have achieved competitive...
research
04/28/2021

End-to-End Approach for Recognition of Historical Digit Strings

The plethora of digitalised historical document datasets released in rec...
research
02/14/2020

An Observational Study of the Effect of Nike Vaporfly Shoes on Marathon Performance

We collected marathon performance data from a systematic sample of elite...
research
11/12/2022

Variational Augmentation for Enhancing Historical Document Image Binarization

Historical Document Image Binarization is a well-known segmentation prob...
research
05/13/2022

An empirical study of CTC based models for OCR of Indian languages

Recognition of text on word or line images, without the need for sub-wor...
research
05/13/2020

Sanskrit Segmentation Revisited

Computationally analyzing Sanskrit texts requires proper segmentation in...

Please sign up or login with your details

Forgot password? Click here to reset