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Distributed eigenfaces for massive face image data
- Park, Jeong-Keun;
- Park, Ho-Hyun;
- Park, Jaehwa
WEB OF SCIENCE
1SCOPUS
3초록
The assumption that the number of training samples is less than the number of pixels in a face image is essential for conventional eigenface-based face recognition. But recently, it has become impractical for massive face image collections. A parallel processing method using distributed eigenfaces is presented. A massive face image set was divided into a bunch of small subsets that satisfied the assumption of conventional approaches. Eigenfaces were extracted from the subsets and stored in a cloud system. Face recognition was performed by parallel processing using the distributed eigenfaces in the cloud system. A face recognition system was implemented in the Hadoop system. Various experiments were performed to test the validity of the distributed eigenface-based approach. The experimental results show that, compared to conventional methods, the implemented distributed face recognition system worked well for large datasets without significant performance degradation.
키워드
- 제목
- Distributed eigenfaces for massive face image data
- 저자
- Park, Jeong-Keun; Park, Ho-Hyun; Park, Jaehwa
- 발행일
- 2017-12
- 유형
- Article
- 권
- 76
- 호
- 24
- 페이지
- 25983 ~ 26000