Chinese scientists fine-tuned an algorithm used for distinguishing between faces in photographs and tested their system, called GuassainFace, on a database known as Labelled Faces in the Wild (LFW).
The LFW is a database with a dataset of 13,000 headshots of famous people and has become a standard benchmark for testing facial recognition using a computer, 'phys.Org' reported.
In the study, GuassainFace results showed a success rate of 98.52 per cent on the LFW, compared to an average of 97.53 per cent for humans - the first time a computer has ever beaten the human average, researchers said.
The same thing is true for a computer. In order to discern if two photos show the same person, the computer has to have seen that person before in multiple environments.
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To allow that to happen, Chaochao Lu and Xiaoou Tang, from Chinese University of Hong Kong, exposed their system to multiple datasets, such as the Multi-PIE database or Life Photos.
Beating humans on the LFW is a remarkable achievement, of course, but it is just one benchmark, researchers noted, adding that computer technology still has a long way to go before matching the abilities of humans in generalised surroundings.