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논문검색

An application of KPCA and SVM in the human face recognition

초록

영어

Face Recognition technology is a very important biological feature Recognition technology. Face Recognition is more and more researchers' attention, especially the principal Component Analysis method (Principle Component Analysis, PCA) after the application of Face Recognition, Face Recognition application domain expands unceasingly in daily life, such as immigration, entrance guard system, the Olympic security, airport security checks, etc. Although the face recognition system has better recognition effect has been achieved, but still by illumination, posture, facial expression change, hairstyle, with or without glasses, and the influence of various factors such as aging. Therefore, in this paper, the study of face recognition technology, has important theory significance and practical application value.A face recognition method that based on KPCA and SVM is proposed in this paper.

목차

Abstract
 1. Introduction and Background
 2. Basic Methods
 3. Support Vector Machine
 4. KPCA Application in Human Face Feature Extraction
 5. Experiments
 6. Conclusion
 References

저자정보

  • Feng Yue School of Automation, Harbin University of Science and Technology HUST Harbin, China
  • Meng Qing Song School of Automation, Harbin University of Science and Technology HUST Harbin, China
  • Yuan Hai Bo School of Automation, Harbin University of Science and Technology HUST Harbin, China

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