• Title/Summary/Keyword: PE92 Database

Search Result 3, Processing Time 0.018 seconds

An Overview of Hangul Handwritten Image Database PE92 (한글 필기체 영상 데이터베이스 PE92의 소개)

  • Kim, D.H.;Bang, S.Y.
    • Annual Conference on Human and Language Technology
    • /
    • 1992.10a
    • /
    • pp.567-575
    • /
    • 1992
  • 한글 문자인식 시스템을 개발하기 앞서 생각해야 할 것이 인식실험에 사용될 문자 데이타를 수집하는 것이다. 이 논문에서는 연구 개발자들에게 문자인식 실험에 필요한 충분한 데이타를 제공하며 필기체 문자 데이타를 표준화하여 문자인식 시스템 상호간의 성능을 객관적으로 평가하기 위하여 한글 필기체 문자 데이터베이스 PE92를 개발하였다. 여기서는 PE92 데이타베이스의 소개로서 먼저 PE92를 수집하는데 있어 고려사항들, 즉 필기자, 수집문자의 수, 수집용지의 규격, 데이타베이스의 저장, 데이타의 압축에 대하여 알아본다. 다음 PE92 데이타베이스의 규격을 알아본다.

  • PDF

Improved Handwritten Hangeul Recognition using Deep Learning based on GoogLenet (GoogLenet 기반의 딥 러닝을 이용한 향상된 한글 필기체 인식)

  • Kim, Hyunwoo;Chung, Yoojin
    • The Journal of the Korea Contents Association
    • /
    • v.18 no.7
    • /
    • pp.495-502
    • /
    • 2018
  • The advent of deep learning technology has made rapid progress in handwritten letter recognition in many languages. Handwritten Chinese recognition has improved to 97.2% accuracy while handwritten Japanese recognition approached 99.53% percent accuracy. Hanguel handwritten letters have many similar characters due to the characteristics of Hangeul, so it was difficult to recognize the letters because the number of data was small. In the handwritten Hanguel recognition using Hybrid Learning, it used a low layer model based on lenet and showed 96.34% accuracy in handwritten Hanguel database PE92. In this paper, 98.64% accuracy was obtained by organizing deep CNN (Convolution Neural Network) in handwritten Hangeul recognition. We designed a new network for handwritten Hangeul data based on GoogLenet without using the data augmentation or the multitasking techniques used in Hybrid learning.

Neural Network-based Recognition of Handwritten Hangul Characters in Form's Monetary Fields (전표 금액란에 나타나는 필기 한글의 신경망-기반 인식)

  • 이진선;오일석
    • Journal of Korea Society of Industrial Information Systems
    • /
    • v.5 no.1
    • /
    • pp.25-30
    • /
    • 2000
  • Hangul is regarded as one of the difficult character set due to the large number of classes and the shape similarity among different characters. Most of the conventional researches attempted to recognize the 2,350 characters which are popularly used, but this approach has a problem or low recognition performance while it provides a generality. On the contrary, recognition of a small character set appearing in specific fields like postal address or bank checks is more practical approach. This paper describes a research for recognizing the handwritten Hangul characters appearing in monetary fields. The modular neural network is adopted for the classification and three kinds of feature are tested. The experiment performed using standard Hangul database PE92 showed the correct recognition rate 91.56%.

  • PDF