2022
DOI: 10.3390/electronics11081210
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Face Image Analysis Using Machine Learning: A Survey on Recent Trends and Applications

Abstract: Human face image analysis using machine learning is an important element in computer vision. The human face image conveys information such as age, gender, identity, emotion, race, and attractiveness to both human and computer systems. Over the last ten years, face analysis methods using machine learning have received immense attention due to their diverse applications in various tasks. Although several methods have been reported in the last ten years, face image analysis still represents a complicated challeng… Show more

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Cited by 6 publications
(2 citation statements)
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“…Recently, with the advancement of digital image processing and computer vision methodologies especially using machine learning and deep learning, researchers have applied these techniques in different medical fields [ 47 ] and in particular to OSA detection during wakefulness using facial landmarks [ 47 , 48 ]. It is well known that people with craniofacial abnormalities are often diagnosed with OSA [ 48 50 ], based on that OSA detection might be possible by using craniofacial characteristics using landmarks from different image postures [ 51 ]. Figure 6 shows a standard landmark system used for OSA detection using facial image analysis.…”
Section: Methodsmentioning
confidence: 99%
“…Recently, with the advancement of digital image processing and computer vision methodologies especially using machine learning and deep learning, researchers have applied these techniques in different medical fields [ 47 ] and in particular to OSA detection during wakefulness using facial landmarks [ 47 , 48 ]. It is well known that people with craniofacial abnormalities are often diagnosed with OSA [ 48 50 ], based on that OSA detection might be possible by using craniofacial characteristics using landmarks from different image postures [ 51 ]. Figure 6 shows a standard landmark system used for OSA detection using facial image analysis.…”
Section: Methodsmentioning
confidence: 99%
“…With the continuous evolution of deep learning, classic models like LeNet-5 [27], AlexNet [28], VGG [29], ResNet [30], MobileNet [31], and EfficientNet [32] have been introduced. These models have been applied in various domains such as image classification [33,34], object detection [35], semantic segmentation [36], facial recognition [37], medical image analysis [38], autonomous driving [39], and natural language processing [40], achieving outstanding results.…”
Section: Research On Machine Learning For Architectural Classificationmentioning
confidence: 99%