• Corpus ID: 221676954

DIGITAL IMAGE PROCESSING TECHNIQUES FOR FACE RECOGNITION

@inproceedings{Roman2013DIGITALIP,
  title={DIGITAL IMAGE PROCESSING TECHNIQUES FOR FACE RECOGNITION},
  author={Fernando Roman},
  year={2013}
}
Abstract. Face recognition is one of many applications of digital image processing. It is concerned with the automatic identification of an individual in a digital image. There are many algorithms through which this process can be carried out. One of these algorithms compresses a database of face images and keeps only the data useful for facial approximation. Any face image can then be approximated using only the information contained in the compressed database, even if the image was not in the… 
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