FaceParser - A new face segmentation approach and labeled database

  • Khan, Khalil
  • Ahmad, Nasir
  • Uddin, Irfan
  • Mazhar, Muhammad Ehsan
  • Khan, Rehan Ullah
Citations

SCOPUS

1

초록

Background and objective: A novel face parsing method is proposed in this paper which partition facial image into six semantic classes. Unlike previous approaches which segmented a facial image into three or four classes, we extended the class labels to six. Materials and Methods: A data-set of 464 images taken from FEI, MIT-CBCL, Pointing'04 and SiblingsDB databases was annotated. A discriminative model was trained by extracting features from squared patches. The built model was tested on two different semantic segmentation ap-proaches - pixel-based and super-pixel-based semantic segmentation (PB_SS and SPB_SS). Results: A pixel labeling accuracy (PLA) of 94.68% and 90.35% was obtained with PB_SS and SPB_SS methods respectively on frontal images. Conclusions: A new method for face parts parsing was proposed which efficiently segmented a facial image into its constitute parts. © 2018 Science Publishing Corporation Inc.

키워드

Expression classificationFace segmentationGender classificationPose estimation
제목
FaceParser - A new face segmentation approach and labeled database
저자
Khan, KhalilAhmad, NasirUddin, IrfanMazhar, Muhammad EhsanKhan, Rehan Ullah
DOI
10.14419/ijet.v7i2.5.10043
발행일
2018
유형
Article
저널명
International Journal of Engineering and Technology(UAE)
7
2
페이지
1 ~ 3