Distributed eigenfaces for massive face image data

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초록

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

EigenfaceFace recognitionParallel processingHadoopPRINCIPAL COMPONENT ANALYSISRECOGNITION
제목
Distributed eigenfaces for massive face image data
저자
Park, Jeong-KeunPark, Ho-HyunPark, Jaehwa
DOI
10.1007/s11042-017-4823-6
발행일
2017-12
유형
Article
저널명
Multimedia Tools and Applications
76
24
페이지
25983 ~ 26000