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Masked Face Emotion Recognition Based on Facial Landmarks and Deep Learning Approaches for Visually Impaired People
by
Akhmedov, Farkhod
, Mukhiddinov, Mukhriddin
, Cho, Jinsoo
, Djuraev, Oybek
, Mukhamadiyev, Abdinabi
in
Accuracy
/ Artificial Intelligence
/ Blindness
/ computer vision
/ convolutional neural network
/ Deep Learning
/ emotion recognition
/ Emotions
/ Facial Expression
/ facial expression recognition
/ facial landmarks
/ Facial Recognition
/ Humans
/ Identification and classification
/ Machine vision
/ Neural networks
/ Neural Networks, Computer
/ Visual impairment
2023
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Masked Face Emotion Recognition Based on Facial Landmarks and Deep Learning Approaches for Visually Impaired People
by
Akhmedov, Farkhod
, Mukhiddinov, Mukhriddin
, Cho, Jinsoo
, Djuraev, Oybek
, Mukhamadiyev, Abdinabi
in
Accuracy
/ Artificial Intelligence
/ Blindness
/ computer vision
/ convolutional neural network
/ Deep Learning
/ emotion recognition
/ Emotions
/ Facial Expression
/ facial expression recognition
/ facial landmarks
/ Facial Recognition
/ Humans
/ Identification and classification
/ Machine vision
/ Neural networks
/ Neural Networks, Computer
/ Visual impairment
2023
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Do you wish to request the book?
Masked Face Emotion Recognition Based on Facial Landmarks and Deep Learning Approaches for Visually Impaired People
by
Akhmedov, Farkhod
, Mukhiddinov, Mukhriddin
, Cho, Jinsoo
, Djuraev, Oybek
, Mukhamadiyev, Abdinabi
in
Accuracy
/ Artificial Intelligence
/ Blindness
/ computer vision
/ convolutional neural network
/ Deep Learning
/ emotion recognition
/ Emotions
/ Facial Expression
/ facial expression recognition
/ facial landmarks
/ Facial Recognition
/ Humans
/ Identification and classification
/ Machine vision
/ Neural networks
/ Neural Networks, Computer
/ Visual impairment
2023
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Masked Face Emotion Recognition Based on Facial Landmarks and Deep Learning Approaches for Visually Impaired People
Journal Article
Masked Face Emotion Recognition Based on Facial Landmarks and Deep Learning Approaches for Visually Impaired People
2023
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Overview
Current artificial intelligence systems for determining a person’s emotions rely heavily on lip and mouth movement and other facial features such as eyebrows, eyes, and the forehead. Furthermore, low-light images are typically classified incorrectly because of the dark region around the eyes and eyebrows. In this work, we propose a facial emotion recognition method for masked facial images using low-light image enhancement and feature analysis of the upper features of the face with a convolutional neural network. The proposed approach employs the AffectNet image dataset, which includes eight types of facial expressions and 420,299 images. Initially, the facial input image’s lower parts are covered behind a synthetic mask. Boundary and regional representation methods are used to indicate the head and upper features of the face. Secondly, we effectively adopt a facial landmark detection method-based feature extraction strategy using the partially covered masked face’s features. Finally, the features, the coordinates of the landmarks that have been identified, and the histograms of the oriented gradients are then incorporated into the classification procedure using a convolutional neural network. An experimental evaluation shows that the proposed method surpasses others by achieving an accuracy of 69.3% on the AffectNet dataset.
Publisher
MDPI AG,MDPI
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