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Prototype Memory for Large-scale Face Representation Learning.

TLDR
Prototype Memory as discussed by the authors uses a limited-size memory module for storing recent class prototypes and employs a set of algorithms to update it in appropriate way, which can be used with various loss functions, hard example mining algorithms and encoder architectures.
Abstract
Face representation learning using datasets with massive number of identities requires appropriate training methods. Softmax-based approach, currently the state-of-the-art in face recognition, in its usual "full softmax" form is not suitable for datasets with millions of persons. Several methods, based on the "sampled softmax" approach, were proposed to remove this limitation. These methods, however, have a set of disadvantages. One of them is a problem of "prototype obsolescence": classifier weights (prototypes) of the rarely sampled classes, receive too scarce gradients and become outdated and detached from the current encoder state, resulting in an incorrect training signals. This problem is especially serious in ultra-large-scale datasets. In this paper, we propose a novel face representation learning model called Prototype Memory, which alleviates this problem and allows training on a dataset of any size. Prototype Memory consists of the limited-size memory module for storing recent class prototypes and employs a set of algorithms to update it in appropriate way. New class prototypes are generated on the fly using exemplar embeddings in the current mini-batch. These prototypes are enqueued to the memory and used in a role of classifier weights for usual softmax classification-based training. To prevent obsolescence and keep the memory in close connection with encoder, prototypes are regularly refreshed, and oldest ones are dequeued and disposed. Prototype Memory is computationally efficient and independent of dataset size. It can be used with various loss functions, hard example mining algorithms and encoder architectures. We prove the effectiveness of the proposed model by extensive experiments on popular face recognition benchmarks.

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Posted Content

STC speaker recognition systems for the NIST SRE 2021.

TL;DR: In this paper, a number of diverse subsystems based on using deep neural networks as feature extractors were used for speaker verification filed in the NIST 2021 Speaker Recognition Evaluation for both fixed and open training conditions.
Book ChapterDOI

FaceMix: Transferring Local Regions for Data Augmentation in Face Recognition

TL;DR: FaceMix as mentioned in this paper is a flexible face-specific data augmentation technique that transfers a local area of an image to another image, and it can generate new images for a class, using face data from other classes, and these two modes also could be combined.
References
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Proceedings Article

Prototypical Networks for Few-shot Learning

TL;DR: Prototypical Networks as discussed by the authors learn a metric space in which classification can be performed by computing distances to prototype representations of each class, and achieve state-of-the-art results on the CU-Birds dataset.
Proceedings ArticleDOI

Deep face recognition

TL;DR: It is shown how a very large scale dataset can be assembled by a combination of automation and human in the loop, and the trade off between data purity and time is discussed.
Proceedings ArticleDOI

ArcFace: Additive Angular Margin Loss for Deep Face Recognition

TL;DR: This paper presents arguably the most extensive experimental evaluation against all recent state-of-the-art face recognition methods on ten face recognition benchmarks, and shows that ArcFace consistently outperforms the state of the art and can be easily implemented with negligible computational overhead.
Journal ArticleDOI

Joint Face Detection and Alignment Using Multitask Cascaded Convolutional Networks

TL;DR: Zhang et al. as mentioned in this paper proposed a deep cascaded multitask framework that exploits the inherent correlation between detection and alignment to boost up their performance, which leverages a cascaded architecture with three stages of carefully designed deep convolutional networks to predict face and landmark location in a coarse-to-fine manner.
Proceedings ArticleDOI

Learning a similarity metric discriminatively, with application to face verification

TL;DR: The idea is to learn a function that maps input patterns into a target space such that the L/sub 1/ norm in the target space approximates the "semantic" distance in the input space.
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