Unconstrained Text Detection in Manga: a New Dataset and Baseline

09/09/2020
by   Julián Del Gobbo, et al.
7

The detection and recognition of unconstrained text is an open problem in research. Text in comic books has unusual styles that raise many challenges for text detection. This work aims to binarize text in a comic genre with highly sophisticated text styles: Japanese manga. To overcome the lack of a manga dataset with text annotations at a pixel level, we create our own. To improve the evaluation and search of an optimal model, in addition to standard metrics in binarization, we implement other special metrics. Using these resources, we designed and evaluated a deep network model, outperforming current methods for text binarization in manga in most metrics.

READ FULL TEXT

page 2

page 6

page 7

page 12

research
10/07/2020

Unconstrained Text Detection in Manga

The detection and recognition of unconstrained text is an open problem i...
research
03/23/2022

Robust Text Line Detection in Historical Documents: Learning and Evaluation Methods

Text line segmentation is one of the key steps in historical document un...
research
05/19/2020

RoadText-1K: Text Detection Recognition Dataset for Driving Videos

Perceiving text is crucial to understand semantics of outdoor scenes and...
research
05/19/2023

Persian Typographical Error Type Detection using Many-to-Many Deep Neural Networks on Algorithmically-Generated Misspellings

Digital technologies have led to an influx of text created daily in a va...
research
04/26/2018

Pushing the Limits of Unconstrained Face Detection: a Challenge Dataset and Baseline Results

Face detection has witnessed immense progress in the last few years, wit...
research
05/08/2019

TE141K: Artistic Text Benchmark for Text Effects Transfer

Text effects are combinations of visual elements such as outlines, color...
research
07/08/2022

Detection of Furigana Text in Images

Furigana are pronunciation notes used in Japanese writing. Being able to...

Please sign up or login with your details

Forgot password? Click here to reset