Publication result detail

Text extraction from fuzzy inspection image based on adaptive immune factor

YU, X.; PANG, P.; GAO, Q.; LI, D.; ŘÍHA, K.

Original Title

Text extraction from fuzzy inspection image based on adaptive immune factor

English Title

Text extraction from fuzzy inspection image based on adaptive immune factor

Type

Scopus Article

Original Abstract

In order to achieve accurate and efficient extraction of text object from fuzzy inspection image. In this paper, aiming at various types of fuzzy inspection images, an adaptive immune algorithm is proposed based on the principle of artificial immune and the concept of immune factors combined with adaptive filtering algorithm. The new algorithm proposed in this paper first realizes adaptive filtering by changing the filter window dynamically, which not only preserves the details of the target text, but also filters out the noise. After that, we design different immune factors according to different types of fuzziness, so as to ensure the integrity and accuracy of the extracted text object to the greatest extent. The experimental results show that the proposed new algorithm is more effective when dealing with the same type of blurred inspection images, the true positive rate (TPR) date of the new algorithm is better than other traditional target extraction algorithms. Moreover, the false positive rate of the new algorithm is better than that of other false positive rate (FPR) data. Through the analysis of each evaluation index, it shows that the algorithm in this paper is feasible and accurate in the text extraction of fuzzy inspection image. © 2021, Science Press in China. All right reserved.

English abstract

In order to achieve accurate and efficient extraction of text object from fuzzy inspection image. In this paper, aiming at various types of fuzzy inspection images, an adaptive immune algorithm is proposed based on the principle of artificial immune and the concept of immune factors combined with adaptive filtering algorithm. The new algorithm proposed in this paper first realizes adaptive filtering by changing the filter window dynamically, which not only preserves the details of the target text, but also filters out the noise. After that, we design different immune factors according to different types of fuzziness, so as to ensure the integrity and accuracy of the extracted text object to the greatest extent. The experimental results show that the proposed new algorithm is more effective when dealing with the same type of blurred inspection images, the true positive rate (TPR) date of the new algorithm is better than other traditional target extraction algorithms. Moreover, the false positive rate of the new algorithm is better than that of other false positive rate (FPR) data. Through the analysis of each evaluation index, it shows that the algorithm in this paper is feasible and accurate in the text extraction of fuzzy inspection image. © 2021, Science Press in China. All right reserved.

Keywords

Adaptive immune factor; Artificial coordinated immunization; Fuzzy inspection image; Target extraction

Key words in English

Adaptive immune factor; Artificial coordinated immunization; Fuzzy inspection image; Target extraction

Authors

YU, X.; PANG, P.; GAO, Q.; LI, D.; ŘÍHA, K.

RIV year

2025

Released

15.12.2021

Publisher

Tianjin University

ISBN

1005-0086

Periodical

Guangdianzi Jiguang/Journal of Optoelectronics Laser

Volume

32

Number

12

State

People's Republic of China

Pages from

1293

Pages to

1299

Pages count

7

URL

BibTex

@article{BUT182497,
  author="Xiao {Yu} and Peipei {Pang} and Qiang {Gao} and Dahua {Li} and Kamil {Říha}",
  title="Text extraction from fuzzy inspection image based on adaptive immune factor",
  journal="Guangdianzi Jiguang/Journal of Optoelectronics Laser",
  year="2021",
  volume="32",
  number="12",
  pages="1293--1299",
  doi="10.16136/j.joel.2021.12.0290",
  issn="1005-0086",
  url="https://gdzjg.org.in/index.html"
}