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Privacy-Protected Facial Biometric Verification Using Fuzzy Forest Learning

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Figure

Fig. 1.Typical face verification approaches using various 2-D/3-D facial mod-els cannot be applied in the scrambled facial domain
Fig. 3 shows such a case. Before scrambling, faces are easily
Fig. 6 illustrates the fuzzy tree constructed for this purpose.
Fig. 5.Example of random subspace selection of 100 trees in the scrambled facial feature space
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