The Elements of End-to-end Deep Face Recognition: A Survey of Recent
Advances
- URL: http://arxiv.org/abs/2009.13290v4
- Date: Mon, 27 Dec 2021 05:55:08 GMT
- Title: The Elements of End-to-end Deep Face Recognition: A Survey of Recent
Advances
- Authors: Hang Du, Hailin Shi, Dan Zeng, Xiao-Ping Zhang, and Tao Mei
- Abstract summary: Face recognition is one of the most popular and long-standing topics in computer vision.
Deep face recognition has made remarkable progress and been widely used in many real-world applications.
In this survey article, we present a comprehensive review about the recent advance of each element.
- Score: 56.432660252331495
- License: http://arxiv.org/licenses/nonexclusive-distrib/1.0/
- Abstract: Face recognition is one of the most popular and long-standing topics in
computer vision. With the recent development of deep learning techniques and
large-scale datasets, deep face recognition has made remarkable progress and
been widely used in many real-world applications. Given a natural image or
video frame as input, an end-to-end deep face recognition system outputs the
face feature for recognition. To achieve this, a typical end-to-end system is
built with three key elements: face detection, face alignment, and face
representation. The face detection locates faces in the image or frame. Then,
the face alignment is proceeded to calibrate the faces to the canonical view
and crop them with a normalized pixel size. Finally, in the stage of face
representation, the discriminative features are extracted from the aligned face
for recognition. Nowadays, all of the three elements are fulfilled by the
technique of deep convolutional neural network. In this survey article, we
present a comprehensive review about the recent advance of each element. To
start with, we present an overview of the end-to-end deep face recognition.
Then, we review the advance of each element, respectively, covering many
aspects such as the to-date algorithm designs, evaluation metrics, datasets,
performance comparison, existing challenges, and promising directions for
future research. Also, we provide a detailed discussion about the effect of
each element on its subsequent elements and the holistic system. Through this
survey, we wish to bring contributions in two aspects: first, readers can
conveniently identify the methods which are quite strong-baseline style in the
subcategory for further exploration; second, one can also employ suitable
methods for establishing a state-of-the-art end-to-end face recognition system
from scratch.
Related papers
- Robustness Disparities in Face Detection [64.71318433419636]
We present the first of its kind detailed benchmark of face detection systems, specifically examining the robustness to noise of commercial and academic models.
Across all the datasets and systems, we generally find that photos of individuals who are $textitmasculine presenting$, of $textitolder$, of $textitdarker skin type$, or have $textitdim lighting$ are more susceptible to errors than their counterparts in other identities.
arXiv Detail & Related papers (2022-11-29T05:22:47Z) - A Comparative Analysis of the Face Recognition Methods in Video
Surveillance Scenarios [0.0]
This study presents comparative benchmark tables for the state-of-art face recognition methods.
We constructed a video surveillance dataset of face IDs with high age variance, intra-class variance (face make-up, beard, etc.) with native surveillance facial imagery data for evaluation.
On the other hand, this work discovers the best recognition methods for different conditions like non-masked faces, masked faces, and faces with glasses.
arXiv Detail & Related papers (2022-11-05T17:59:18Z) - Human Face Recognition from Part of a Facial Image based on Image
Stitching [0.0]
Most of the current techniques for face recognition require the presence of a full face of the person to be recognized.
In this work, we adopted the process of stitching the face by completing the missing part with the flipping of the part shown in the picture.
The selected face recognition algorithms that are applied here are Eigenfaces and geometrical methods.
arXiv Detail & Related papers (2022-03-10T19:31:57Z) - Evaluation of Human and Machine Face Detection using a Novel Distinctive
Human Appearance Dataset [0.76146285961466]
We evaluate current state-of-the-art face-detection models in their ability to detect faces in images.
The evaluation results show that face-detection algorithms do not generalize well to diverse appearances.
arXiv Detail & Related papers (2021-11-01T02:20:40Z) - 3D Face Recognition: A Survey [6.53124955401627]
This survey focuses on reviewing the 3D face recognition techniques developed in the past ten years.
The advantages and disadvantages of the techniques are summarized in terms of accuracy, complexity and robustness to face variation.
A review of available 3D face databases is provided, along with the discussion of future research challenges and directions.
arXiv Detail & Related papers (2021-08-25T07:00:59Z) - Going Deeper Into Face Detection: A Survey [30.711114908611563]
Face detection is a crucial first step in many facial recognition and face analysis systems.
With the breakthrough work in image classification using deep neural networks in 2012, there has been a huge paradigm shift in face detection.
In this work, we provide a detailed overview of some of the most representative deep learning based face detection methods.
arXiv Detail & Related papers (2021-03-27T20:18:00Z) - Deep Learning-based Face Super-resolution: A Survey [78.11274281686246]
Face super-resolution, also known as face hallucination, is a domain-specific image super-resolution problem.
To date, few summaries of the studies on the deep learning-based face super-resolution are available.
In this survey, we present a comprehensive review of deep learning techniques in face super-resolution in a systematic manner.
arXiv Detail & Related papers (2021-01-11T08:17:11Z) - Facial Expressions as a Vulnerability in Face Recognition [73.85525896663371]
This work explores facial expression bias as a security vulnerability of face recognition systems.
We present a comprehensive analysis of how facial expression bias impacts the performance of face recognition technologies.
arXiv Detail & Related papers (2020-11-17T18:12:41Z) - Face Super-Resolution Guided by 3D Facial Priors [92.23902886737832]
We propose a novel face super-resolution method that explicitly incorporates 3D facial priors which grasp the sharp facial structures.
Our work is the first to explore 3D morphable knowledge based on the fusion of parametric descriptions of face attributes.
The proposed 3D priors achieve superior face super-resolution results over the state-of-the-arts.
arXiv Detail & Related papers (2020-07-18T15:26:07Z) - Learning Oracle Attention for High-fidelity Face Completion [121.72704525675047]
We design a comprehensive framework for face completion based on the U-Net structure.
We propose a dual spatial attention module to efficiently learn the correlations between facial textures at multiple scales.
We take the location of the facial components as prior knowledge and impose a multi-discriminator on these regions.
arXiv Detail & Related papers (2020-03-31T01:37:10Z)
This list is automatically generated from the titles and abstracts of the papers in this site.
This site does not guarantee the quality of this site (including all information) and is not responsible for any consequences.