DisguiseNet : A Contrastive Approach for Disguised Face Verification in the Wild

25 Apr 2018  ·  Skand Vishwanath Peri, Abhinav Dhall ·

This paper describes our approach for the Disguised Faces in the Wild (DFW) 2018 challenge. The task here is to verify the identity of a person among disguised and impostors images. Given the importance of the task of face verification it is essential to compare methods across a common platform. Our approach is based on VGG-face architecture paired with Contrastive loss based on cosine distance metric. For augmenting the data set, we source more data from the internet. The experiments show the effectiveness of the approach on the DFW data. We show that adding extra data to the DFW dataset with noisy labels also helps in increasing the generalization performance of the network. The proposed network achieves 27.13% absolute increase in accuracy over the DFW baseline.

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Datasets


Task Dataset Model Metric Name Metric Value Global Rank Result Benchmark
Disguised Face Verification Disguised Faces in the Wild DisguiseNet GAR @0.1% FAR 23.25 # 1
GAR @1% FAR 60.89 # 1
GAR @10% FAR 98.99 # 1

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