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Efficient Verification-Based Face Identification

2023-12-20Unverified0· sign in to hype

Amit Rozner, Barak Battash, Ofir Lindenbaum, Lior Wolf

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Abstract

We study the problem of performing face verification with an efficient neural model f. The efficiency of f stems from simplifying the face verification problem from an embedding nearest neighbor search into a binary problem; each user has its own neural network f. To allow information sharing between different individuals in the training set, we do not train f directly but instead generate the model weights using a hypernetwork h. This leads to the generation of a compact personalized model for face identification that can be deployed on edge devices. Key to the method's success is a novel way of generating hard negatives and carefully scheduling the training objectives. Our model leads to a substantially small f requiring only 23k parameters and 5M floating point operations (FLOPS). We use six face verification datasets to demonstrate that our method is on par or better than state-of-the-art models, with a significantly reduced number of parameters and computational burden. Furthermore, we perform an extensive ablation study to demonstrate the importance of each element in our method.

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