Large-scale geo-facial image analysis

@article{Islam2015LargescaleGI,
  title={Large-scale geo-facial image analysis},
  author={Mohammad T. Islam and Connor Greenwell and Richard Souvenir and Nathan Jacobs},
  journal={EURASIP Journal on Image and Video Processing},
  year={2015},
  volume={2015},
  pages={1-17}
}
While face analysis from images is a well-studied area, little work has explored the dependence of facial appearance on the geographic location from which the image was captured. To fill this gap, we constructed GeoFaces, a large dataset of geotagged face images, and used it to examine the geo-dependence of facial features and attributes, such as ethnicity, gender, or the presence of facial hair. Our analysis illuminates the relationship between raw facial appearance, facial attributes, and… CONTINUE READING

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