Pilgrims Face Recognition Dataset -- HUFRD
نویسنده
چکیده
In this work, we define a new pilgrims face recognition and face detection dataset, called Hajj and Umrah facial dataset. The new developed dataset presents various pilgrims’ images taken from outside the Holy Masjid El-Harram in Makkah during the 2011-2012 Hajj and Umrah seasons. Such dataset will be used to test our developed facial recognition and detection algorithms, as well as in the missing and found recognition system [2].
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