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Chart Classification Using Neural Architecture Search

첫 페이지 보기
  • 발행기관
    한국차세대컴퓨팅학회 바로가기
  • 간행물
    한국차세대컴퓨팅학회 학술대회 바로가기
  • 통권
    The 9th International Conference on Next Generation Computing 2023 (2023.12)바로가기
  • 페이지
    pp.313-316
  • 저자
    Deokho An, HeLin Yin, Yeong Hyeon Gu
  • 언어
    영어(ENG)
  • URL
    https://www.earticle.net/Article/A448180

원문정보

초록

영어
As deep learning technology has improved in recent years, it has expanded from text-oriented document analysis to unstructured data such as images and tables, and there are an increasing number of studies on extracting meaning from such data and analyzing documents. Among them, there are various studies that analyze chart images because charts provide a lot of information such as checking or comparing abnormal elements of data by graphically representing various types of data. Chart classification is an important step because each category has a different way of extracting data and extracting and interpreting the meaning accordingly, so the focus is on improving the classification performance of deep learning-based classification models for various chart categories. However, deep learning-based models have the problem that experts need to allocate a lot of time to configure the model design optimized for the data and check the performance of the model after training. As a way to alleviate these problems, in this paper, we studied a chart classification model using a Neural Architecture Search technique that automatically explores the model structure optimized for the data. The optimal network structure was explored, trained, and tested using 69,600 chart data consisting of 12 chart categories, and the performance was compared with chart classification models using VGG-16 and ResNet-50 algorithms as a way to check the performance of the model. The average classification performance of the model using Neural Architecture Search showed higher classification accuracy than other models with Precision 99.7%, Recall 99.6%, and F1-Score 99.9%.

목차

Abstract
I. INTRODUCTION
II. RELATED WORK
III. DATASET
A. CHART Infographics 2019[7]
B. Chart category segmentation
C. Select chart data
IV. NEURAL ARCHITECTURE SEARCH
A. PC-DARTS[8]
B. Searching for the optimal model structure for PCDARTSbased chart classification
V. EXPERIMENTS
A. About data organization
B. Parameter Information
C. Performance evaluation metrics
VII. CONCLUSION
ACKNOWLEDGMENT
REFERENCES

키워드

chart classification data visualization Neural Architecture Search PC-DARTS

저자

  • Deokho An [ Department of Computer Science and Engineering, and Convergence Engineering for Intelligent Drone Sejong University ]
  • HeLin Yin [ Department of Computer Science and Engineering Sejong University ]
  • Yeong Hyeon Gu [ Department of Artificial Intelligence Sejong University ] Corresponding Author

참고문헌

자료제공 : 네이버학술정보

간행물 정보

발행기관

  • 발행기관명
    한국차세대컴퓨팅학회 [Korean Institute of Next Generation Computing]
  • 설립연도
    2005
  • 분야
    공학>컴퓨터학
  • 소개
    본 학회는 차세대 PC 및 그 관련분야의 학술활동을 통하여 차세대 PC의 학문 및 기술발전을 도모하고 산업발전 및 국제협력 증진을 목적으로 한다.

간행물

  • 간행물명
    한국차세대컴퓨팅학회 학술대회
  • 간기
    반년간
  • 수록기간
    2021~2025
  • 십진분류
    KDC 566 DDC 004

이 권호 내 다른 논문 / 한국차세대컴퓨팅학회 학술대회 The 9th International Conference on Next Generation Computing 2023

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