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Open AccessJournal ArticleDOI

Multi-View Cosine Similarity Learning with Application to Face Verification

Zining Wang, +2 more
- 25 May 2022 - 
- Vol. 10, Iss: 11, pp 1800-1800
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TLDR
The proposed MVCSL method is able to leverage both the common information of multi-view data and the private information of each view, which jointly learns a cosine similarity for each view in the transformed subspace and integrates the cosine similarities of all the views in a unified framework.
Abstract
An instance can be easily depicted from different views in pattern recognition, and it is desirable to exploit the information of these views to complement each other. However, most of the metric learning or similarity learning methods are developed for single-view feature representation over the past two decades, which is not suitable for dealing with multi-view data directly. In this paper, we propose a multi-view cosine similarity learning (MVCSL) approach to efficiently utilize multi-view data and apply it for face verification. The proposed MVCSL method is able to leverage both the common information of multi-view data and the private information of each view, which jointly learns a cosine similarity for each view in the transformed subspace and integrates the cosine similarities of all the views in a unified framework. Specifically, MVCSL employs the constraints that the joint cosine similarity of positive pairs is greater than that of negative pairs. Experiments on fine-grained face verification and kinship verification tasks demonstrate the superiority of our MVCSL approach.

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Citations
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Journal ArticleDOI

ConvFaceNeXt: Lightweight Networks for Face Recognition

TL;DR: The proposed ConvFaceNeXt model achieves competitive or even better results when compared with previous lightweight face recognition models, on top of a significantly lower FLOP count, parameters, and model size.
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LCAM: Low-Complexity Attention Module for Lightweight Face Recognition Networks

TL;DR: In this article , a Low-Complexity Attention Module (LCAM) is proposed to recalibrate the weights of either channel features alone or along with spatial features to prioritize informative regions while suppressing unimportant information.
Journal ArticleDOI

A survey on kinship verification

TL;DR: The Nemo-Kinship dataset as discussed by the authors was proposed as a benchmark dataset addressing large inter-subject age variations and consisting of 4216 videos of 248 persons from 85 families.
Peer Review

UvA-DARE (Digital Academic Repository) A survey on kinship verification

TL;DR: A survey on kinship verification methods and datasets is provided in this article , where a new multi-modal dataset (Nemo-Kinship Dataset) is proposed as a benchmark dataset addressing large inter-subject age variations.
References
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