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논문 기본 정보

자료유형
학술저널
저자정보
노천명 (경상대학교) 강동훈 (경상대학교) 이재철 (경상대학교)
저널정보
(사)한국CDE학회 한국CDE학회 논문집 한국CDE학회 논문집 제25권 제2호
발행연도
2020.6
수록면
132 - 139 (8page)
DOI
10.7315/CDE.2020.132

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초록· 키워드

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Through the combination of computer vision technology and artificial intelligence, facial recognition technology is drawing attention as a new means of personal authentication in the era of the fourth industry. Facial recognition technology uses imaging equipment to photograph a person"s face and extract characteristic data. The extracted data are matched against the facial features of the stored database. Facial recognition technology is a contactless technology compared to other biometric recognition technologies, which is used in various fields due to its high hygiene, convenience and security, and in particular, safety accidents in workplaces are closely related to life, and various studies related to workplace safety management using intelligent video information are being conducted in the manufacturing industry. In this paper, a study is conducted on the development of facial recognition algorithm using deep learning to control worker access in hazardous areas. The accuracy of the recognition of the proposed facial recognition algorithm (object detection algorithm (SSD) and object recognition algorithm (ResNet)) is closely related to the safety of the operator. Therefore, the goal is to analyze the relationship between various normalization techniques (Min-Max Scaler, MaxAbs Scaler, Standard Scaler) and the recognition rate of the proposed facial recognition algorithm to propose a high-accuracy facial recognition algorithm. In the future, we will conduct research on safety issues in the manufacturing industry based on facial recognition and image recognition technologies.

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ABSTRACT
1. 서론
2. 본론
3. 결과 비교/분석
4. 결론
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